Results and Rankings

Results for methods appear here after users upload them and approve them for public display.



EPE all EPE matched EPE unmatched d0-10 d10-60 d60-140 s0-10 s10-40 s40+
GroundTruth [1] 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.000 0.000 Visualize Results
DDVM [2] 2.475 1.281 12.198 2.095 0.898 0.974 0.312 1.090 16.548 Visualize Results
ViCo_VideoFlow_MOF [3] 1.618 0.768 8.543 1.966 0.601 0.348 0.392 1.198 8.705 Visualize Results
StreamFlow [4] 1.874 0.824 10.435 2.091 0.635 0.350 0.409 1.240 10.674 Visualize Results
VideoFlow-BOF [5] 1.713 0.812 9.054 2.056 0.636 0.387 0.387 1.242 9.422 Visualize Results
VideoFlow-MOF [6] 1.649 0.788 8.660 2.090 0.609 0.334 0.403 1.243 8.804 Visualize Results
MemoFlow [7] 1.692 0.805 8.917 2.125 0.631 0.338 0.407 1.262 9.098 Visualize Results
TSA [8] 2.293 1.036 12.536 2.071 0.776 0.698 0.455 1.265 13.898 Visualize Results
CroCo-Flow [9] 2.436 1.211 12.423 2.375 0.794 0.940 0.429 1.275 15.208 Visualize Results
OM_GMFlow [10] 2.199 0.995 12.004 2.068 0.728 0.532 0.470 1.277 13.008 Visualize Results
CCMR+ [11] 2.097 0.933 11.575 2.210 0.761 0.488 0.387 1.321 12.453 Visualize Results
GMFlow+ [12] 2.367 1.095 12.739 2.097 0.808 0.708 0.453 1.328 14.377 Visualize Results
EMD-L [13] 2.505 0.983 14.909 2.173 0.790 0.550 0.469 1.331 15.451 Visualize Results
OPPFlow [14] 2.340 1.073 12.662 2.085 0.803 0.681 0.453 1.337 14.121 Visualize Results
MemFlow-T [15] 1.840 0.874 9.710 2.233 0.671 0.370 0.467 1.351 9.828 Visualize Results
MemFlow [16] 1.914 0.931 9.928 2.332 0.736 0.419 0.430 1.382 10.556 Visualize Results
StreamFlow-Baseline [17] 2.106 0.928 11.703 2.329 0.741 0.397 0.478 1.384 11.923 Visualize Results
PVTFlow [18] 2.113 0.942 11.657 2.379 0.736 0.458 0.486 1.388 11.933 Visualize Results
FlowFormer++ [19] 1.943 0.878 10.627 2.302 0.720 0.384 0.438 1.404 10.712 Visualize Results
SCFlow [20] 2.160 0.957 11.970 2.141 0.719 0.522 0.490 1.409 12.266 Visualize Results
AGM-FlowNet [21] 2.039 0.896 11.360 2.310 0.703 0.392 0.495 1.419 11.201 Visualize Results
GMFlow_RVC [22] 2.218 1.085 11.437 2.327 0.813 0.651 0.539 1.433 12.428 Visualize Results
AGF-Flow3 [23] 2.733 1.217 15.105 2.419 0.912 0.737 0.463 1.440 17.133 Visualize Results
GMA+LCT-Flow [24] 2.734 1.218 15.103 2.419 0.914 0.738 0.465 1.441 17.131 Visualize Results
MMAFlow [25] 2.471 1.158 13.177 2.503 0.900 0.666 0.440 1.455 15.005 Visualize Results
RAFT-it+_RVC [26] 2.696 1.317 13.929 2.486 0.929 0.839 0.440 1.456 16.880 Visualize Results
APCAFlow [27] 2.257 0.998 12.521 2.455 0.793 0.488 0.489 1.457 12.964 Visualize Results
GAFlow-FF [28] 2.050 0.961 10.929 2.402 0.763 0.438 0.453 1.465 11.381 Visualize Results
FlowFormer [29] 2.088 0.958 11.304 2.431 0.759 0.426 0.459 1.472 11.656 Visualize Results
flowformer_val [30] 2.088 0.958 11.306 2.431 0.759 0.427 0.459 1.473 11.657 Visualize Results
CrossFlow [31] 2.237 1.060 11.828 2.631 0.857 0.510 0.563 1.479 12.376 Visualize Results
LSHRAFT [32] 2.584 1.231 13.626 2.658 1.066 0.765 0.537 1.480 15.424 Visualize Results
RAFT2-L [33] 2.601 1.196 14.061 2.535 0.905 0.764 0.506 1.482 15.709 Visualize Results
SAMFlow [34] 2.080 1.036 10.600 2.436 0.776 0.546 0.515 1.488 11.278 Visualize Results
GAFlow [35] 2.244 1.036 12.092 2.558 0.840 0.533 0.465 1.503 12.864 Visualize Results
OM_GMA [36] 2.349 1.105 12.492 2.534 0.870 0.547 0.553 1.504 13.304 Visualize Results
MatchFlow_GMA [37] 2.373 1.061 13.070 2.604 0.863 0.485 0.504 1.508 13.735 Visualize Results
MS_RAFT [38] 2.667 1.190 14.706 2.635 0.941 0.749 0.468 1.511 16.377 Visualize Results
CCAFlow [39] 2.908 1.403 15.171 2.442 1.022 1.124 0.412 1.512 18.663 Visualize Results
SSTM++3kt [40] 2.485 1.097 13.800 2.730 0.929 0.466 0.524 1.514 14.566 Visualize Results
SGFlow [41] 2.124 0.992 11.348 2.457 0.777 0.487 0.480 1.517 11.741 Visualize Results
FlowDiffuser [42] 2.026 0.966 10.666 2.494 0.790 0.430 0.478 1.519 10.930 Visualize Results
RAFT-CF [43] 2.645 1.218 14.289 2.775 1.051 0.639 0.547 1.524 15.775 Visualize Results
ProMotion [44] 2.006 0.957 10.566 2.531 0.758 0.426 0.502 1.525 10.630 Visualize Results
ProtoFormer [45] 2.065 0.963 11.043 2.529 0.774 0.425 0.482 1.527 11.217 Visualize Results
RPKNet [46] 2.657 1.356 13.273 2.640 0.986 0.954 0.528 1.529 15.956 Visualize Results
Win-Win [47] 2.338 1.254 11.165 2.678 0.853 0.778 0.480 1.530 13.498 Visualize Results
AnyFlow+GMA [48] 2.456 1.116 13.372 2.768 0.937 0.506 0.539 1.532 14.198 Visualize Results
ce_v214 [49] 2.134 1.018 11.235 2.661 0.840 0.412 0.487 1.534 11.755 Visualize Results
MS_RAFT+_RVC [50] 2.682 1.278 14.122 2.508 1.020 0.848 0.420 1.535 16.677 Visualize Results
SplatFlow [51] 2.072 1.063 10.285 2.717 0.851 0.452 0.508 1.538 11.109 Visualize Results
MatchFlow_GMA_2-view [52] 2.767 1.255 15.092 2.609 0.949 0.778 0.500 1.541 16.986 Visualize Results
TransFlow [53] 2.076 0.986 10.960 2.596 0.800 0.402 0.501 1.544 11.171 Visualize Results
LLA-FLOW+GMA [54] 2.330 1.134 12.091 2.758 0.931 0.561 0.548 1.549 13.066 Visualize Results
ce_skii_skii [55] 2.205 1.063 11.515 2.745 0.884 0.445 0.500 1.549 12.246 Visualize Results
MCPFlow_RVC [56] 2.350 1.094 12.595 2.702 0.870 0.507 0.517 1.552 13.373 Visualize Results
MMAFlow [57] 2.639 1.264 13.847 2.563 0.960 0.772 0.529 1.555 15.732 Visualize Results
KPA-Flow [58] 2.272 1.093 11.891 2.707 0.869 0.570 0.520 1.572 12.657 Visualize Results
MatchFlow_RAFT [59] 2.641 1.196 14.421 2.712 0.963 0.705 0.530 1.578 15.688 Visualize Results
ACR-Net [60] 2.091 1.019 10.830 2.627 0.800 0.445 0.526 1.597 11.047 Visualize Results
CE_SKII [61] 2.194 1.066 11.390 2.686 0.876 0.490 0.479 1.598 12.134 Visualize Results
AGF-Flow2 [62] 3.028 1.385 16.430 2.653 1.043 0.951 0.527 1.602 18.899 Visualize Results
RFPM [63] 2.901 1.331 15.698 2.732 1.063 0.811 0.535 1.602 17.779 Visualize Results
RAFT+LCT-Flow [64] 3.024 1.381 16.428 2.650 1.041 0.944 0.519 1.603 18.898 Visualize Results
ACAFlow [65] 2.710 1.312 14.112 2.751 1.065 0.709 0.480 1.609 16.435 Visualize Results
EMD-M [66] 2.848 1.340 15.148 2.713 0.997 0.848 0.526 1.615 17.358 Visualize Results
CRAFT [67] 2.417 1.163 12.637 2.837 1.012 0.547 0.538 1.623 13.656 Visualize Results
SKII [68] 2.160 1.049 11.215 2.754 0.886 0.458 0.465 1.624 11.856 Visualize Results
NASFlow-RAFT [69] 3.174 1.407 17.580 2.720 1.064 0.969 0.518 1.625 20.100 Visualize Results
ACAFlow [70] 2.573 1.228 13.543 2.718 0.958 0.646 0.488 1.627 15.203 Visualize Results
GMA+TCU-aug [71] 2.469 1.175 13.028 2.723 1.040 0.545 0.525 1.630 14.148 Visualize Results
FCTR [72] 2.927 1.291 16.270 2.811 1.100 0.780 0.562 1.633 17.800 Visualize Results
COMBO [73] 2.746 1.269 14.795 2.599 0.982 0.753 0.571 1.638 16.220 Visualize Results
SwinTR-RAFT [74] 2.946 1.411 15.457 2.676 1.045 0.983 0.513 1.640 18.175 Visualize Results
ACAFlow [75] 2.913 1.447 14.869 2.878 1.214 0.799 0.507 1.640 17.922 Visualize Results
GMA-FS [76] 2.441 1.203 12.551 2.777 0.961 0.594 0.587 1.646 13.576 Visualize Results
GMA+TCU+aug [77] 2.442 1.161 12.895 2.723 1.004 0.556 0.547 1.653 13.757 Visualize Results
CGCV-GMA [78] 2.430 1.149 12.881 2.821 1.014 0.525 0.500 1.657 13.873 Visualize Results
SSTM++_ttt_ws [79] 2.532 1.164 13.692 2.982 0.957 0.549 0.531 1.658 14.573 Visualize Results
GMFlow [80] 2.902 1.319 15.797 2.491 1.043 0.882 0.714 1.659 16.751 Visualize Results
shallow_finetune [81] 2.382 1.121 12.675 2.760 0.886 0.554 0.581 1.665 13.057 Visualize Results
SSTM++_ttt_nws [82] 2.526 1.149 13.747 2.899 0.929 0.583 0.519 1.666 14.560 Visualize Results
CVEFlow [83] 2.336 1.088 12.515 2.775 0.922 0.499 0.486 1.668 13.132 Visualize Results
SSTM++warm-main [84] 2.591 1.182 14.074 2.959 0.996 0.559 0.515 1.669 15.117 Visualize Results
GMA-base [85] 2.900 1.389 15.224 2.838 1.053 0.811 0.571 1.672 17.427 Visualize Results
MFCFlow [86] 2.579 1.326 12.805 3.018 1.113 0.662 0.587 1.678 14.647 Visualize Results
SSTM++nws-main [87] 2.582 1.169 14.102 2.905 0.971 0.583 0.510 1.678 15.045 Visualize Results
SKFlow [88] 2.261 1.138 11.415 2.839 0.945 0.498 0.577 1.681 12.015 Visualize Results
AGFlow [89] 2.469 1.221 12.643 2.892 0.991 0.698 0.560 1.692 13.816 Visualize Results
FTGAN [90] 2.865 1.371 15.046 3.019 1.151 0.773 0.582 1.699 17.008 Visualize Results
ErrorMatch-GMA [91] 2.461 1.228 12.519 2.799 1.047 0.642 0.541 1.701 13.821 Visualize Results
RAFT-OCTC [92] 2.574 1.243 13.435 2.880 1.045 0.667 0.578 1.701 14.594 Visualize Results
RAFT-it [93] 2.896 1.407 15.027 2.811 1.157 0.882 0.510 1.701 17.622 Visualize Results
OM_CRAFT [94] 2.412 1.162 12.611 2.741 0.959 0.576 0.689 1.702 12.689 Visualize Results
cascaded [95] 3.740 1.461 22.315 2.552 1.130 1.029 0.580 1.702 24.359 Visualize Results
GMA-two_img [96] 2.881 1.400 14.956 2.857 1.057 0.825 0.569 1.715 17.179 Visualize Results
CGCV-RAFT [97] 2.730 1.244 14.843 2.954 1.072 0.652 0.577 1.721 15.849 Visualize Results
CVE-RAFT [98] 2.707 1.227 14.776 2.942 1.054 0.617 0.580 1.726 15.634 Visualize Results
SeparableFlow-2views [99] 2.667 1.275 14.013 2.937 1.056 0.620 0.580 1.738 15.269 Visualize Results
submission5367 [100] 2.742 1.282 14.656 3.027 1.110 0.644 0.562 1.743 15.980 Visualize Results
flowformer_finetune [101] 2.496 1.266 12.529 2.817 0.966 0.689 0.576 1.746 13.837 Visualize Results
NASFlow [102] 2.822 1.403 14.389 2.998 1.146 0.910 0.655 1.757 16.143 Visualize Results
FCTR-m [103] 2.687 1.261 14.310 2.897 1.032 0.709 0.578 1.761 15.386 Visualize Results
DICL_update [104] 3.438 1.618 18.272 3.271 1.286 1.004 0.627 1.768 21.424 Visualize Results
CasFlow [105] 3.168 1.507 16.711 2.856 1.214 0.997 0.549 1.768 19.552 Visualize Results
raft-jm [106] 2.854 1.365 14.983 3.089 1.102 0.796 0.650 1.769 16.403 Visualize Results
SKFlow_RAFT [107] 2.607 1.288 13.352 2.977 1.018 0.654 0.642 1.769 14.379 Visualize Results
MeFlow [108] 3.090 1.487 16.158 3.155 1.170 0.881 0.636 1.769 18.460 Visualize Results
ProtoFormer [109] 2.527 1.219 13.194 2.837 0.943 0.591 0.624 1.776 13.785 Visualize Results
RAFTwarm+AOIR [110] 2.813 1.371 14.565 3.088 1.099 0.727 0.603 1.781 16.271 Visualize Results
GMFlowNet [111] 2.648 1.271 13.882 2.818 1.050 0.776 0.699 1.784 14.417 Visualize Results
OM_RAFT [112] 2.845 1.351 15.039 3.006 1.084 0.794 0.618 1.785 16.464 Visualize Results
LLA-Flow [113] 2.624 1.277 13.613 2.974 1.092 0.685 0.701 1.789 14.194 Visualize Results
RAFT-illumination [114] 3.181 1.519 16.725 3.018 1.186 0.961 0.693 1.790 18.888 Visualize Results
final_tune [115] 2.582 1.238 13.535 2.740 0.924 0.671 0.610 1.794 14.269 Visualize Results
RAFTv2-OER-warm-start [116] 2.831 1.396 14.536 3.109 1.133 0.742 0.628 1.798 16.259 Visualize Results
PRAFlow_RVC [117] 3.559 1.629 19.292 2.851 1.322 1.118 0.545 1.799 22.770 Visualize Results
HCVNet [118] 2.810 1.336 14.824 2.921 1.096 0.835 0.601 1.802 16.205 Visualize Results
ErrorMatch-RAFT [119] 2.817 1.331 14.937 3.008 1.119 0.773 0.661 1.805 15.969 Visualize Results
RAFT+AOIR [120] 3.172 1.529 16.561 3.033 1.156 1.019 0.611 1.806 19.185 Visualize Results
SCAR [121] 2.885 1.443 14.647 2.990 1.174 0.977 0.648 1.807 16.590 Visualize Results
MFFC [122] 3.029 1.517 15.363 3.135 1.189 0.916 0.621 1.812 17.929 Visualize Results
DIP [123] 2.834 1.282 15.485 2.723 1.090 0.801 0.571 1.812 16.531 Visualize Results
OADFlow [124] 3.256 1.571 16.990 3.115 1.181 1.073 0.656 1.813 19.644 Visualize Results
GMA [125] 2.470 1.241 12.501 2.863 1.057 0.653 0.566 1.817 13.492 Visualize Results
RAFT [126] 2.855 1.405 14.680 3.112 1.133 0.770 0.634 1.823 16.371 Visualize Results
L2L-Flow-ext [127] 2.954 1.392 15.684 3.059 1.158 0.822 0.649 1.823 17.125 Visualize Results
RAFTv2-OER-2-view [128] 3.190 1.554 16.526 3.055 1.191 1.033 0.634 1.824 19.170 Visualize Results
MFR [129] 2.801 1.380 14.385 3.075 1.112 0.772 0.674 1.829 15.703 Visualize Results
RAFTwarm+OBS [130] 2.826 1.356 14.809 3.134 1.116 0.735 0.631 1.832 16.117 Visualize Results
RAFT-base [131] 3.199 1.561 16.544 3.071 1.181 1.024 0.637 1.839 19.195 Visualize Results
DEQ-Flow-H [132] 2.851 1.366 14.956 2.984 1.211 0.764 0.554 1.840 16.688 Visualize Results
LSM_FLOW_RVC [133] 4.150 2.018 21.531 3.470 1.600 1.478 0.606 1.840 27.323 Visualize Results
MVFlow [134] 2.714 1.256 14.598 2.899 1.026 0.657 0.572 1.840 15.452 Visualize Results
RAFT+NCUP [135] 2.692 1.323 13.854 3.139 1.086 0.636 0.635 1.844 14.949 Visualize Results
RAFT-FS [136] 2.785 1.341 14.557 3.114 1.104 0.649 0.681 1.850 15.487 Visualize Results
YOIO [137] 2.596 1.243 13.609 2.779 1.031 0.714 0.612 1.854 14.212 Visualize Results
DCN-Flow [138] 3.186 1.553 16.498 3.086 1.251 1.032 0.658 1.878 18.890 Visualize Results
L2L-Flow-ext-warm [139] 2.780 1.319 14.697 3.098 1.145 0.637 0.656 1.879 15.502 Visualize Results
CSFlow-2-view [140] 3.025 1.445 15.914 3.061 1.125 0.877 0.622 1.881 17.720 Visualize Results
IOFPL-ft [141] 4.224 1.956 22.704 3.288 1.479 1.419 0.646 1.897 27.596 Visualize Results
DICL-Flow+ [142] 3.317 1.637 17.022 3.528 1.284 0.973 0.665 1.904 19.897 Visualize Results
IOFPL-CVr8-ft [143] 4.014 1.906 21.194 3.246 1.418 1.374 0.656 1.905 25.767 Visualize Results
RAFT-DFlow [144] 3.065 1.453 16.212 3.028 1.115 0.885 0.617 1.907 18.019 Visualize Results
RAPIDFlow [145] 3.564 1.811 17.849 3.263 1.345 1.259 0.690 1.923 21.783 Visualize Results
ScaleRAFT [146] 3.164 1.399 17.550 2.996 1.142 0.778 0.678 1.926 18.493 Visualize Results
SSTM-nws [147] 3.076 1.431 16.491 2.992 1.129 0.843 0.553 1.935 18.356 Visualize Results
EFlow-L [148] 3.449 1.647 18.148 3.115 1.309 1.099 0.730 1.936 20.608 Visualize Results
RAFT-GT-ft [149] 3.288 1.501 17.858 3.107 1.157 0.918 0.618 1.939 19.802 Visualize Results
RAFT+OBS [150] 3.104 1.487 16.286 3.107 1.153 0.964 0.657 1.940 18.061 Visualize Results
Deformable_RAFT [151] 2.874 1.386 15.009 3.118 1.201 0.766 0.636 1.949 16.212 Visualize Results
RAFT-A [152] 3.137 1.590 15.762 3.153 1.270 1.032 0.534 1.956 18.912 Visualize Results
XC_Flow_1 [153] 3.716 1.766 19.618 3.287 1.577 1.105 0.732 1.971 22.749 Visualize Results
DPCTF [154] 4.466 2.059 24.076 3.369 1.641 1.467 0.631 1.987 29.485 Visualize Results
STaRFlow [155] 3.707 1.838 18.946 3.618 1.439 1.122 0.744 2.018 22.491 Visualize Results
DICL-Flow [156] 3.604 1.662 19.442 3.650 1.237 1.014 0.676 2.021 21.962 Visualize Results
RAFT+ConvUp [157] 3.642 1.661 19.796 3.372 1.258 1.096 0.732 2.054 21.920 Visualize Results
RAFTv1-OER-2-view [158] 3.508 1.610 18.984 3.366 1.252 1.039 0.660 2.054 21.158 Visualize Results
MF2C [159] 2.980 1.484 15.191 3.187 1.281 0.978 0.692 2.060 16.560 Visualize Results
HD3F+MSDRNet [160] 4.553 2.085 24.669 3.572 1.651 1.601 0.600 2.063 30.193 Visualize Results
ADLAB-PRFlow [161] 3.324 1.534 17.916 3.236 1.277 1.008 0.727 2.077 19.230 Visualize Results
PPAC-HD3 [162] 4.599 2.116 24.852 3.521 1.702 1.637 0.617 2.083 30.457 Visualize Results
Scale-flow [163] 3.455 1.638 18.269 3.266 1.276 1.012 0.687 2.088 20.493 Visualize Results
SCV [164] 3.603 1.698 19.139 3.243 1.429 1.170 0.787 2.110 21.197 Visualize Results
EFlow-T [165] 4.178 1.953 22.331 3.528 1.601 1.301 0.886 2.136 25.463 Visualize Results
metaFlow [166] 3.519 1.660 18.669 3.782 1.216 0.988 0.754 2.160 20.521 Visualize Results
HD3-Flow [167] 4.666 2.174 24.994 3.786 1.719 1.647 0.657 2.182 30.579 Visualize Results
HD3-Flow-OER [168] 4.642 2.166 24.845 3.587 1.762 1.672 0.639 2.188 30.454 Visualize Results
EFlow-M-tile [169] 3.835 1.800 20.420 3.397 1.534 1.178 0.823 2.216 22.690 Visualize Results
RAFT+LCV [170] 3.365 1.589 17.848 3.801 1.244 0.911 0.792 2.236 18.858 Visualize Results
RAFT-TF_RVC [171] 3.321 1.727 16.323 3.484 1.450 1.026 0.617 2.301 19.195 Visualize Results
SMURF [172] 4.183 2.138 20.861 4.198 1.744 1.296 0.740 2.302 25.819 Visualize Results
NASFlow-PWC [173] 4.850 2.307 25.590 4.004 1.883 1.584 0.948 2.306 30.378 Visualize Results
SelFlow [174] 4.262 2.040 22.369 4.083 1.715 1.287 0.582 2.343 27.154 Visualize Results
htjnewfull [175] 4.673 2.460 22.701 3.875 1.911 1.880 1.089 2.344 28.090 Visualize Results
less_iter_fine [176] 4.337 1.917 24.061 3.584 1.499 1.233 0.786 2.346 26.760 Visualize Results
ARFlow-mv-ft [177] 4.142 2.082 20.937 4.056 1.707 1.300 0.706 2.366 25.475 Visualize Results
vcn+MSDRNet [178] 4.143 1.999 21.621 3.932 1.637 1.266 0.763 2.387 25.165 Visualize Results
htjwarp2 [179] 4.607 2.482 21.923 3.935 1.935 1.842 1.082 2.387 27.462 Visualize Results
MaskFlownet [180] 4.172 2.048 21.494 3.783 1.745 1.310 0.592 2.389 26.253 Visualize Results
ADW [181] 4.477 2.625 19.584 4.562 2.294 1.941 0.664 2.408 28.393 Visualize Results
DCVNet [182] 3.655 1.986 17.243 3.822 1.556 1.296 0.772 2.409 20.937 Visualize Results
mask [183] 4.675 2.541 22.063 4.028 1.952 1.885 1.115 2.412 27.807 Visualize Results
IRR-PWC [184] 4.579 2.154 24.355 4.165 1.843 1.292 0.709 2.423 28.998 Visualize Results
LiteFlowNet2 [185] 4.686 2.248 24.571 4.048 1.899 1.473 0.811 2.433 29.375 Visualize Results
ADW-Net [186] 4.017 1.951 20.855 3.720 1.472 1.308 0.818 2.442 23.694 Visualize Results
DistillFlow+ft [187] 4.095 2.031 20.934 4.300 1.666 1.236 0.673 2.448 25.068 Visualize Results
EFlow-M [188] 4.801 2.256 25.568 3.793 1.889 1.509 0.918 2.456 29.752 Visualize Results
RAFT-VM [189] 4.190 1.941 22.521 3.890 1.624 1.192 0.724 2.470 25.543 Visualize Results
Flow1D [190] 3.806 1.949 18.946 3.604 1.756 1.394 0.738 2.479 22.221 Visualize Results
IRR-PWC-OER [191] 4.361 2.076 22.988 3.869 1.790 1.304 0.723 2.487 26.933 Visualize Results
DC-RAFT [192] 3.817 2.032 18.382 3.759 1.853 1.227 0.895 2.489 Visualize Results
LiteFlowNet3-S [193] 4.529 2.120 24.162 3.952 1.720 1.398 0.795 2.502 27.949 Visualize Results
LiteFlowNet3 [194] 4.448 2.089 23.681 3.873 1.755 1.344 0.754 2.503 27.471 Visualize Results
PMC-PWC_edge_loss [195] 4.562 2.213 23.706 4.078 1.795 1.447 0.882 2.512 27.775 Visualize Results
RichFlow-ft-fnl [196] 4.634 2.152 24.886 4.187 1.815 1.377 0.802 2.519 28.780 Visualize Results
MaskFlownet-S [197] 4.384 2.120 22.840 3.905 1.821 1.359 0.645 2.526 27.429 Visualize Results
VCN-WARP [198] 4.544 2.446 21.602 4.154 1.965 1.736 1.098 2.528 26.479 Visualize Results
PRichFlow [199] 4.690 2.209 24.926 4.060 1.780 1.502 0.857 2.538 28.927 Visualize Results
GCA-Net-ft+ [200] 4.478 2.228 22.831 3.931 1.869 1.547 0.876 2.552 27.019 Visualize Results
SAMFL [201] 4.765 2.282 25.008 4.208 1.846 1.449 0.893 2.587 29.232 Visualize Results
GPNet [202] 4.481 2.328 22.041 4.130 1.952 1.563 0.726 2.588 27.688 Visualize Results
ScopeFlow [203] 4.098 1.999 21.214 4.028 1.689 1.180 0.725 2.589 24.477 Visualize Results
VCN+LCV [204] 4.200 2.099 21.330 4.276 1.738 1.259 0.933 2.592 24.297 Visualize Results
GCA-Net [205] 4.494 2.168 23.464 3.926 1.702 1.545 0.800 2.593 27.422 Visualize Results
SENSE [206] 4.860 2.301 25.732 4.121 1.991 1.493 0.812 2.606 30.402 Visualize Results
PMC-PWC_without_edge_loss [207] 4.573 2.180 24.094 4.073 1.839 1.361 0.881 2.608 27.653 Visualize Results
RichFlow-ft [208] 5.075 2.375 27.107 4.317 1.880 1.584 0.804 2.637 32.178 Visualize Results
VCN-OER [209] 4.409 2.210 22.332 4.055 1.841 1.495 0.871 2.675 26.146 Visualize Results
CompactFlow [210] 4.626 2.099 25.253 4.192 1.825 1.233 0.845 2.677 28.120 Visualize Results
CompactFlow-woscv [211] 4.858 2.213 26.439 4.220 1.867 1.453 0.906 2.701 29.709 Visualize Results
VCN [212] 4.404 2.216 22.238 4.381 1.782 1.423 0.955 2.725 25.570 Visualize Results
less_iteration [213] 4.757 2.215 25.481 3.813 1.747 1.671 0.913 2.732 28.734 Visualize Results
LiteFlowNet [214] 5.381 2.419 29.535 4.090 2.097 1.729 0.754 2.747 34.722 Visualize Results
PWC_acn [215] 5.058 2.509 25.830 4.335 2.127 1.773 0.833 2.757 31.574 Visualize Results
ProFlow [216] 5.017 2.596 24.736 5.016 2.146 1.601 0.910 2.809 30.715 Visualize Results
OF-OEF [217] 5.030 2.517 25.514 4.623 2.147 1.643 0.825 2.871 31.117 Visualize Results
pwc_xx [218] 5.319 2.598 27.502 4.500 2.226 1.744 0.996 2.901 32.615 Visualize Results
MFF [219] 4.566 2.216 23.732 4.664 2.017 1.222 0.893 2.902 26.810 Visualize Results
OAS-Net [220] 5.014 2.458 25.862 4.536 2.054 1.572 0.879 2.910 30.628 Visualize Results
A-A [221] 4.766 2.205 25.671 4.781 2.039 1.093 0.958 2.919 28.154 Visualize Results
Pwc_ps [222] 5.773 2.693 30.882 4.584 2.347 1.827 1.011 2.942 36.249 Visualize Results
AL-OF-r0.2 [223] 4.616 2.070 25.382 4.256 1.741 1.154 0.823 2.955 27.453 Visualize Results
CoT-AMFlow [224] 5.136 2.482 26.778 4.574 2.224 1.571 0.886 2.963 31.476 Visualize Results
CVPR-1235 [225] 3.649 1.912 17.818 3.857 1.576 1.144 0.823 2.965 19.311 Visualize Results
PWC-Net+ [226] 4.596 2.254 23.696 4.781 2.045 1.234 0.945 2.978 26.620 Visualize Results
PWC-Net [227] 5.042 2.445 26.221 4.636 2.087 1.475 0.799 2.986 31.070 Visualize Results
ProFlow_ROB [228] 5.015 2.659 24.192 4.985 2.185 1.771 0.964 2.989 29.987 Visualize Results
VCN_RVC [229] 4.524 2.212 23.375 4.128 1.922 1.545 0.834 2.991 26.537 Visualize Results
PWC-Net-OER [230] 4.847 2.435 24.521 4.408 2.072 1.589 0.794 2.998 29.426 Visualize Results
Semantic_Lattice [231] 4.886 2.456 24.701 4.596 2.082 1.529 0.803 3.024 29.649 Visualize Results
PWC-Net_RVC [232] 4.903 2.454 24.878 4.636 2.090 1.517 0.799 3.029 29.800 Visualize Results
DA_opticalflow [233] 4.234 2.088 21.746 4.055 1.941 1.366 0.852 3.056 23.865 Visualize Results
StruPyNet-ft [234] 5.511 2.593 29.316 4.598 2.284 1.675 0.945 3.059 34.112 Visualize Results
PatchBatch-CENT+SD [235] 6.783 3.507 33.498 6.080 3.408 2.103 0.725 3.064 45.858 Visualize Results
FlowFieldsCNN [236] 5.363 2.303 30.313 4.718 2.020 1.399 1.032 3.065 32.422 Visualize Results
DeepDiscreteFlow [237] 5.728 2.623 31.042 5.347 2.478 1.590 0.959 3.072 35.819 Visualize Results
FPCR-Net [238] 4.935 2.455 25.141 4.589 2.181 1.491 0.914 3.081 29.352 Visualize Results
FPCR-Net2 [239] 4.935 2.455 25.144 4.589 2.181 1.491 0.913 3.081 29.355 Visualize Results
PWC-Net+KF [240] 4.964 2.438 25.561 4.603 2.066 1.500 0.739 3.087 30.465 Visualize Results
Flownet2-IAER [241] 5.493 2.594 29.140 4.730 2.318 1.609 0.941 3.090 33.899 Visualize Results
CompactFlowNet [242] 5.548 2.716 28.664 4.817 2.444 1.965 1.132 3.099 33.392 Visualize Results
Flownet2-IA [243] 5.512 2.608 29.196 4.801 2.320 1.609 0.959 3.107 33.923 Visualize Results
ADF-Scaleflow [244] 4.649 2.242 24.291 4.554 2.053 1.290 1.185 3.108 25.570 Visualize Results
PWC-Net+KF2 [245] 4.979 2.430 25.783 4.571 2.078 1.480 0.778 3.112 30.353 Visualize Results
ContinualFlow_ROB [246] 4.528 2.723 19.248 5.050 2.573 1.713 0.872 3.114 26.063 Visualize Results
STC-Flow [247] 4.868 2.439 24.669 4.711 2.188 1.459 0.882 3.116 28.866 Visualize Results
FDFlowNet [248] 5.111 2.521 26.233 4.667 2.169 1.642 1.034 3.121 30.160 Visualize Results
CAR_100 [249] 5.456 2.619 28.601 4.866 2.373 1.545 1.039 3.153 32.954 Visualize Results
Deep-EIP [250] 6.123 2.704 34.004 4.887 2.417 1.976 1.236 3.155 37.558 Visualize Results
MPIF [251] 5.591 2.663 29.473 5.109 2.206 1.723 1.102 3.163 33.748 Visualize Results
HMFlow [252] 5.038 2.404 26.535 4.582 2.213 1.465 0.926 3.170 29.974 Visualize Results
SfM-PM [253] 5.466 2.683 28.147 4.963 2.186 1.782 1.031 3.182 32.991 Visualize Results
MirrorFlow [254] 6.071 3.186 29.567 5.433 2.801 1.943 0.930 3.183 38.544 Visualize Results
IRR-PWC_RVC [255] 4.797 2.769 21.338 5.063 2.553 1.659 0.807 3.199 28.453 Visualize Results
PatchBatch+Inter [256] 6.222 3.167 31.122 5.246 2.862 2.152 0.905 3.200 39.912 Visualize Results
Lavon [257] 5.905 2.890 30.507 4.682 2.530 2.153 0.997 3.217 36.769 Visualize Results
SJTU_PAMI418 [258] 4.910 2.496 24.600 5.075 2.268 1.394 1.037 3.219 28.217 Visualize Results
TIMCflow [259] 5.049 2.094 29.134 4.738 1.812 1.221 0.922 3.226 29.926 Visualize Results
F3-MPLF [260] 6.274 3.093 32.210 5.045 2.859 2.082 1.083 3.227 39.409 Visualize Results
FlowNet2-ft-sintel [261] 5.739 2.752 30.108 4.818 2.557 1.735 0.959 3.228 35.538 Visualize Results
DCFlow+KF2 [262] 5.067 2.195 28.475 4.652 1.948 1.393 1.021 3.232 29.574 Visualize Results
RAFT_Chairs_Things [263] 4.922 2.292 26.387 4.417 2.219 1.454 0.835 3.244 29.263 Visualize Results
ARFlow+LCT-Flow [264] 5.675 2.565 31.028 4.620 2.369 1.510 0.861 3.246 35.438 Visualize Results
UFlow [265] 6.498 3.078 34.398 4.986 2.794 2.189 0.932 3.256 41.968 Visualize Results
RAFT-GT [266] 5.973 2.776 32.058 5.045 2.359 1.767 1.223 3.270 36.095 Visualize Results
AL-OF-r0.1 [267] 5.092 2.490 26.313 4.530 2.103 1.654 0.931 3.271 30.139 Visualize Results
UlDENet [268] 4.699 2.304 24.236 4.563 1.988 1.317 0.874 3.272 27.123 Visualize Results
FastFlow [269] 5.074 2.588 25.334 5.142 2.286 1.488 1.025 3.277 29.484 Visualize Results
FullFlow+KF [270] 5.802 2.761 30.582 4.866 2.438 1.795 1.037 3.287 35.517 Visualize Results
NccFlow [271] 6.279 3.007 32.973 5.204 2.925 2.029 1.084 3.294 39.295 Visualize Results
CPM_AUG [272] 5.645 2.737 29.362 4.707 2.150 1.918 1.087 3.306 33.925 Visualize Results
FlowFields++ [273] 5.486 2.614 28.900 4.927 2.273 1.706 1.156 3.326 32.200 Visualize Results
FlowFields+ [274] 5.707 2.684 30.356 4.691 2.117 1.793 1.131 3.330 34.167 Visualize Results
UPFlow [275] 5.316 2.421 28.932 4.347 2.070 1.652 0.979 3.337 31.635 Visualize Results
GANFlow [276] 5.244 2.571 27.069 5.079 2.450 1.354 0.958 3.347 31.113 Visualize Results
RicFlow [277] 5.620 2.765 28.907 5.146 2.366 1.679 1.088 3.364 33.573 Visualize Results
FullFlow [278] 5.895 2.838 30.793 4.905 2.506 1.913 1.136 3.373 35.592 Visualize Results
InterpoNet_df [279] 6.044 2.788 32.581 5.154 2.404 1.779 0.985 3.377 37.596 Visualize Results
risc [280] 5.492 2.746 27.878 4.929 2.264 1.820 1.235 3.381 31.722 Visualize Results
CARflow [281] 5.173 2.337 28.319 4.569 1.995 1.357 1.023 3.387 30.096 Visualize Results
UnSAMFlow [282] 5.200 2.558 26.747 4.699 2.260 1.644 0.912 3.390 30.842 Visualize Results
RICBCDN [283] 5.482 2.736 27.871 5.062 2.242 1.757 1.210 3.391 31.738 Visualize Results
TVL1_LD_GF [284] 7.735 3.478 42.372 6.479 3.764 1.982 0.910 3.391 52.099 Visualize Results
ricom20201202 [285] 5.503 2.755 27.906 4.951 2.272 1.825 1.241 3.392 31.757 Visualize Results
FastFlowNet [286] 6.080 2.942 31.692 5.201 2.560 2.036 1.067 3.405 37.440 Visualize Results
CVENG22+RIC [287] 5.391 2.407 29.715 5.044 2.417 1.263 1.061 3.407 31.678 Visualize Results
PGM-C [288] 5.591 2.672 29.389 4.975 2.340 1.791 1.057 3.421 33.339 Visualize Results
DCFlow+KF [289] 5.120 2.245 28.557 4.747 1.981 1.473 1.031 3.421 29.511 Visualize Results
OIFlow [290] 5.709 2.816 29.294 5.143 2.590 1.697 0.937 3.428 34.902 Visualize Results
F2PD_JJN [291] 5.611 2.861 28.027 4.717 2.595 2.035 0.997 3.432 33.756 Visualize Results
DCFlow [292] 5.119 2.283 28.228 4.665 2.108 1.440 1.052 3.434 29.351 Visualize Results
FastFlow2 [293] 5.163 2.747 24.847 4.933 2.428 1.899 1.070 3.441 29.603 Visualize Results
CARflow-mv [294] 4.949 2.322 26.374 4.521 1.918 1.413 1.151 3.442 27.437 Visualize Results
MR-Flow [295] 5.376 2.818 26.235 5.109 2.395 1.755 0.908 3.443 32.221 Visualize Results
FlowSAC_dcf [296] 4.932 2.232 26.936 4.763 2.047 1.303 1.044 3.450 27.794 Visualize Results
FastFlowNet-ft+ [297] 5.635 2.848 28.376 5.136 2.471 1.912 1.087 3.452 33.487 Visualize Results
IHBPFlow [298] 6.100 2.891 32.242 5.501 2.660 1.772 1.081 3.464 37.368 Visualize Results
S2F-IF [299] 5.417 2.549 28.795 4.745 2.198 1.712 1.157 3.468 31.262 Visualize Results
SPM-BPv2 [300] 5.812 2.754 30.743 4.736 2.255 1.933 1.048 3.468 35.118 Visualize Results
SegFlow73 [301] 6.397 2.912 34.808 4.948 2.381 2.053 1.208 3.486 39.197 Visualize Results
InterpoNet_ff [302] 5.535 2.372 31.296 4.720 2.018 1.532 1.064 3.496 32.633 Visualize Results
ARFlow-mv [303] 5.672 2.759 29.429 5.081 2.520 1.597 1.061 3.510 33.780 Visualize Results
FlowNetC-MD [304] 5.444 3.060 24.860 5.039 2.752 2.023 1.319 3.537 30.481 Visualize Results
ARFlow-base [305] 5.936 2.826 31.303 5.141 2.572 1.684 1.109 3.541 35.684 Visualize Results
PST [306] 5.416 2.572 28.592 4.695 2.088 1.761 1.172 3.546 30.987 Visualize Results
MRDFlow [307] 5.255 2.248 29.783 4.368 1.859 1.365 1.192 3.551 29.543 Visualize Results
ERFlow [308] 5.775 3.075 27.800 5.247 2.841 2.055 1.173 3.562 33.949 Visualize Results
InterpoNet_cpm [309] 5.627 2.594 30.344 4.975 2.213 1.640 1.042 3.575 33.321 Visualize Results
WWWWWWAFPW [310] 4.723 2.203 25.276 4.270 1.917 1.341 1.181 3.583 25.041 Visualize Results
GlobalPatchCollider [311] 6.040 2.938 31.309 5.310 2.624 1.824 1.102 3.589 36.455 Visualize Results
DefFlowP [312] 5.273 2.797 25.426 4.916 2.492 1.852 0.888 3.603 31.014 Visualize Results
SegFlow193 [313] 7.071 3.380 37.136 5.206 2.781 2.494 1.236 3.613 44.373 Visualize Results
CPM2 [314] 6.180 3.012 32.008 5.059 2.399 2.126 1.212 3.625 37.014 Visualize Results
ProbFlowFields [315] 5.696 2.545 31.371 4.696 2.150 1.686 1.146 3.658 33.188 Visualize Results
FlowSAC_ff [316] 5.390 2.483 29.086 4.785 2.258 1.459 1.123 3.664 30.723 Visualize Results
ARFlow [317] 5.889 2.734 31.602 5.125 2.605 1.553 1.176 3.676 34.611 Visualize Results
CVENG22+Epic [318] 6.917 3.337 36.099 5.620 2.943 2.253 1.144 3.684 43.380 Visualize Results
AL-OF-r0.05 [319] 5.347 2.498 28.578 4.685 2.180 1.569 1.003 3.695 30.892 Visualize Results
DiscreteFlow+OIR [320] 5.862 2.864 30.303 5.153 2.427 1.825 1.118 3.698 34.633 Visualize Results
InterpoNet_dm [321] 5.711 2.650 30.642 5.078 2.308 1.762 0.997 3.702 33.929 Visualize Results
tfFlowNet2+GLR [322] 6.273 3.081 32.301 4.986 2.870 2.258 1.077 3.702 38.268 Visualize Results
ER-FLOW2 [323] 5.885 3.068 28.868 5.650 2.818 1.883 1.094 3.714 34.911 Visualize Results
EpicFlow [324] 6.285 3.060 32.564 5.205 2.611 2.216 1.135 3.727 38.021 Visualize Results
AutoScaler+ [325] 6.076 2.569 34.656 4.610 2.195 1.863 1.298 3.737 35.431 Visualize Results
FlowFields [326] 5.810 2.621 31.799 4.851 2.232 1.682 1.157 3.739 33.890 Visualize Results
MDFlow [327] 5.458 2.412 30.300 4.754 2.217 1.405 1.078 3.751 31.321 Visualize Results
CPM-Flow [328] 5.960 2.990 30.177 5.038 2.419 2.143 1.155 3.755 35.136 Visualize Results
EPIflow [329] 8.506 4.070 44.676 6.286 3.897 2.777 1.246 3.761 56.015 Visualize Results
TF+OFM [330] 6.727 3.388 33.929 5.544 3.238 2.551 1.512 3.765 39.761 Visualize Results
SDFlow [331] 5.856 2.703 31.585 4.856 2.384 1.852 1.202 3.768 34.017 Visualize Results
DDCNet_Multires_ft_sintel [332] 5.856 3.153 27.878 5.388 3.142 1.927 0.912 3.769 35.383 Visualize Results
SparseFlow [333] 7.851 3.855 40.401 6.117 3.838 2.557 1.071 3.771 51.353 Visualize Results
CNet [334] 8.331 4.455 39.943 5.690 3.877 3.916 1.589 3.779 52.823 Visualize Results
DIP-Flow [335] 6.014 2.922 31.224 5.268 2.521 1.848 1.092 3.788 35.821 Visualize Results
PPM [336] 7.177 3.392 38.025 5.212 2.771 2.642 1.155 3.790 45.233 Visualize Results
UnsupSimFlow [337] 6.916 3.017 38.702 5.114 2.758 2.104 1.108 3.790 43.299 Visualize Results
DistillFlow [338] 5.810 2.709 31.098 4.993 2.483 1.644 1.181 3.817 33.599 Visualize Results
SegFlow113 [339] 6.423 2.995 34.361 5.050 2.496 2.139 1.193 3.818 38.664 Visualize Results
S2D-Matching [340] 6.817 3.737 31.920 5.954 3.380 2.544 1.157 3.831 42.097 Visualize Results
DiscreteFlow [341] 6.077 2.937 31.685 5.106 2.459 1.945 1.074 3.832 36.339 Visualize Results
Devon [342] 6.350 3.234 31.775 5.338 2.878 2.297 1.120 3.834 38.382 Visualize Results
Deep+R [343] 6.769 2.996 37.494 5.182 2.770 2.064 1.157 3.837 41.687 Visualize Results
ResPWCR_ROB [344] 6.530 3.849 28.371 5.565 3.396 2.876 1.306 3.848 38.892 Visualize Results
DeepFlow2 [345] 6.928 3.093 38.166 5.207 2.819 2.144 1.182 3.859 42.854 Visualize Results
SegFlow153 [346] 6.191 2.940 32.682 4.969 2.492 2.119 1.201 3.865 36.570 Visualize Results
SelFlow [347] 6.571 3.119 34.721 5.275 2.834 2.092 1.358 3.883 38.945 Visualize Results
DDCNet_stacked2 [348] 5.865 3.159 27.916 5.564 3.157 1.881 0.961 3.891 34.924 Visualize Results
HSVFlow [349] 6.051 2.967 31.168 4.911 2.682 2.166 1.426 3.942 34.059 Visualize Results
MDFlow-Fast [350] 5.994 2.770 32.283 5.003 2.518 1.860 1.155 3.949 34.946 Visualize Results
SparseFlowFused [351] 7.189 3.286 38.977 5.567 3.098 2.159 1.275 3.963 44.319 Visualize Results
FGI [352] 6.607 3.101 35.158 5.432 2.970 2.131 1.152 3.986 39.985 Visualize Results
StruPyNet [353] 6.389 3.234 32.129 5.318 3.079 2.260 1.087 3.990 38.491 Visualize Results
OF_OCC_LD [354] 10.024 5.815 44.272 8.370 6.009 4.170 1.064 4.017 68.986 Visualize Results
FlowNet2 [355] 6.016 2.977 30.807 5.139 2.786 2.102 1.243 4.027 34.505 Visualize Results
tfFlowNet2 [356] 6.485 3.222 33.100 5.454 2.987 2.305 1.299 4.037 38.138 Visualize Results
DMF_ROB [357] 7.475 3.575 39.245 5.650 3.419 2.441 1.165 4.044 47.063 Visualize Results
AugFNG_ROB [358] 5.500 2.978 26.052 5.282 2.694 1.956 1.113 4.083 30.666 Visualize Results
DeepFlow [359] 7.212 3.336 38.781 5.650 3.144 2.208 1.284 4.107 44.118 Visualize Results
SegFlow33 [360] 6.726 3.200 35.458 5.141 2.553 2.280 1.276 4.110 40.076 Visualize Results
RLOF_DENSE [361] 8.286 4.499 39.169 7.137 4.496 2.952 1.097 4.125 54.018 Visualize Results
RGBFlow [362] 7.285 4.002 34.032 5.897 3.644 3.043 1.657 4.151 42.764 Visualize Results
FF++_ROB [363] 6.496 2.990 35.057 5.319 2.540 2.045 1.030 4.182 39.191 Visualize Results
NNF-Local [364] 7.249 2.973 42.088 4.896 2.817 2.218 1.159 4.183 44.866 Visualize Results
EPMNet [365] 6.134 3.141 30.540 5.431 2.987 2.152 1.306 4.188 34.780 Visualize Results
JOF [366] 8.818 4.599 43.175 7.049 4.617 3.131 1.170 4.196 57.923 Visualize Results
DDFlow [367] 7.401 3.409 39.936 5.357 3.092 2.430 1.548 4.198 44.188 Visualize Results
PCA-Layers [368] 7.886 4.256 37.480 7.284 4.250 2.739 1.672 4.276 47.449 Visualize Results
SAnet [369] 7.304 4.087 33.493 6.289 4.151 2.779 1.287 4.285 44.408 Visualize Results
AggregFlow [370] 7.329 3.696 36.929 5.538 3.435 2.918 1.241 4.296 44.858 Visualize Results
STDC-Flow [371] 8.686 4.718 40.994 7.325 4.853 3.276 1.228 4.323 56.215 Visualize Results
WRTflow [372] 9.457 4.943 46.217 7.494 5.043 3.556 1.646 4.347 60.566 Visualize Results
FALDOI [373] 7.337 3.580 37.904 5.332 3.434 2.885 1.487 4.355 43.526 Visualize Results
SegPM+Interpolation [374] 6.977 3.445 35.761 5.453 2.794 2.486 1.510 4.377 40.371 Visualize Results
SPM-BP [375] 7.325 3.493 38.561 5.534 3.052 2.691 1.279 4.385 44.434 Visualize Results
H-v3 [376] 7.042 4.075 31.249 5.167 3.860 3.989 2.909 4.392 34.005 Visualize Results
PMF [377] 7.630 3.607 40.435 5.584 3.171 2.770 1.266 4.414 46.985 Visualize Results
DDCNet_Stacked [378] 6.997 3.723 33.671 6.141 3.743 2.424 1.000 4.416 42.957 Visualize Results
Classic+NL [379] 9.153 4.814 44.509 7.215 4.822 3.427 1.113 4.496 60.291 Visualize Results
PCA-Flow [380] 8.652 4.725 40.671 7.602 4.818 3.196 1.961 4.524 51.844 Visualize Results
IIOF-NLDP [381] 8.715 4.705 41.403 7.280 4.778 3.265 1.263 4.538 55.795 Visualize Results
FlowNetS+ft+v [382] 7.218 3.752 35.445 6.439 3.635 2.292 1.358 4.609 42.571 Visualize Results
DSPyNet+ft [383] 7.453 3.852 36.769 6.147 3.941 2.549 1.261 4.639 44.957 Visualize Results
Classic+NL-fast [384] 10.088 5.659 46.145 8.010 5.738 4.160 1.092 4.666 67.801 Visualize Results
GeoFlow [385] 8.459 3.908 45.553 5.805 3.550 2.899 1.398 4.667 52.653 Visualize Results
ROF-NND [386] 9.286 5.130 43.129 7.561 5.350 3.796 1.221 4.700 60.367 Visualize Results
BOOM+PF.XY [387] 7.600 3.731 39.137 5.766 3.599 2.798 1.488 4.709 44.902 Visualize Results
SVFilterOh [388] 7.737 3.920 38.851 5.954 3.499 3.160 1.403 4.731 46.420 Visualize Results
NLTGV-SC [389] 8.746 4.635 42.242 7.084 4.749 3.391 1.587 4.780 53.860 Visualize Results
BOOM+PF.XYT [390] 7.683 3.828 39.117 5.797 3.694 2.902 1.585 4.794 44.921 Visualize Results
SFL [391] 7.870 4.476 35.499 7.289 4.547 2.890 1.505 4.818 46.753 Visualize Results
PH-Flow [392] 7.423 3.795 36.960 5.550 3.675 2.716 1.119 4.827 44.926 Visualize Results
ZZZ [393] 8.103 3.604 44.772 5.529 3.212 2.925 1.641 4.832 48.068 Visualize Results
FC-2Layers-FF [394] 8.137 4.261 39.723 6.537 4.257 2.946 1.034 4.835 51.349 Visualize Results
LDOF [395] 9.116 5.037 42.344 6.849 4.928 4.003 1.485 4.839 57.296 Visualize Results
DictFlowS [396] 8.486 4.681 39.477 6.983 4.718 3.383 1.507 4.902 51.733 Visualize Results
DDCNet_B1_ft-sintel [397] 6.909 4.110 29.677 6.421 4.079 2.754 1.508 4.925 38.404 Visualize Results
EgFlow-cl [398] 8.359 4.490 39.903 5.808 4.101 4.371 1.923 4.926 48.615 Visualize Results
ICALD [399] 7.554 3.784 38.270 6.065 3.812 2.626 1.336 4.939 44.705 Visualize Results
DDCNet_B0_tf_sintel [400] 7.461 4.168 34.312 6.777 4.162 2.710 1.182 4.941 44.675 Visualize Results
EPPM [401] 8.377 4.286 41.695 6.556 4.024 3.323 1.834 4.955 49.083 Visualize Results
PatchWMF-OF [402] 7.971 3.766 42.218 5.712 3.568 2.797 1.279 4.970 48.396 Visualize Results
ContFusion [403] 7.857 4.010 39.194 6.265 4.022 2.797 1.333 4.981 47.158 Visualize Results
LocalLayering [404] 8.043 4.014 40.879 5.680 3.841 3.122 1.186 4.990 49.426 Visualize Results
TVL1_BWMFilter [405] 9.034 4.761 43.824 7.245 4.931 3.286 1.450 4.998 56.396 Visualize Results
AGIF+OF [406] 8.514 4.355 42.390 6.873 4.284 2.869 1.190 5.010 53.305 Visualize Results
M-1px [407] 8.229 3.680 45.306 5.654 3.267 2.997 1.718 5.023 48.284 Visualize Results
WLIF-Flow [408] 8.049 3.837 42.348 5.851 3.657 2.811 1.290 5.033 48.843 Visualize Results
FlowNetC+ft+v [409] 7.883 4.132 38.426 6.466 3.952 2.860 1.369 5.049 47.005 Visualize Results
AOD [410] 8.901 4.495 44.753 6.220 4.111 3.687 1.163 5.078 56.463 Visualize Results
Classic+NLP [411] 8.291 4.287 40.925 6.520 4.265 2.984 1.208 5.090 51.162 Visualize Results
Classic++ [412] 9.959 5.410 47.000 8.072 5.554 3.750 1.403 5.098 64.135 Visualize Results
MLDP-OF [413] 8.287 4.165 41.905 6.345 4.127 2.996 1.312 5.122 50.540 Visualize Results
TV-L1+EM [414] 8.916 4.712 43.157 7.021 4.788 3.401 1.456 5.188 54.932 Visualize Results
FAOP-Flow [415] 7.923 3.589 43.239 5.794 3.373 2.861 1.777 5.228 44.927 Visualize Results
Data-Flow [416] 8.868 4.601 43.675 7.294 4.698 3.021 1.794 5.294 52.635 Visualize Results
Horn+Schunck [417] 9.610 5.419 43.734 7.950 5.658 3.976 1.882 5.335 58.274 Visualize Results
WOLF_ROB [418] 8.351 4.512 39.607 6.663 4.462 3.278 1.437 5.348 49.879 Visualize Results
Channel-Flow [419] 8.835 4.754 42.064 6.757 4.566 3.657 1.292 5.349 54.648 Visualize Results
AnyFlow [420] 7.933 3.994 40.027 6.284 3.997 2.756 2.279 5.391 42.122 Visualize Results
MDP-Flow2 [421] 8.445 4.150 43.430 5.703 3.925 3.406 1.420 5.449 50.507 Visualize Results
CPNFlow [422] 8.589 4.575 41.327 7.234 4.542 2.986 1.856 5.484 49.511 Visualize Results
COF_2019 [423] 8.065 4.327 38.535 6.483 4.171 3.217 1.499 5.498 46.827 Visualize Results
SPyNet+ft [424] 8.360 4.512 39.687 6.694 4.368 3.290 1.395 5.534 49.707 Visualize Results
SPyNet [425] 8.431 4.549 40.042 6.921 4.511 3.179 1.442 5.545 50.042 Visualize Results
COF [426] 8.204 4.448 38.805 6.788 4.500 3.324 1.561 5.560 47.534 Visualize Results
OAR-Flow [427] 8.179 4.578 37.525 7.146 4.611 3.131 1.316 5.593 48.445 Visualize Results
DSPyNet [428] 8.328 4.608 38.675 6.959 4.675 3.221 1.703 5.643 47.680 Visualize Results
OatNet01 [429] 8.858 5.408 36.943 7.066 5.389 4.396 2.334 5.675 48.831 Visualize Results
ComponentFusion [430] 8.231 4.274 40.460 6.221 4.252 3.193 1.702 5.701 46.696 Visualize Results
HCOF+multi [431] 8.799 4.980 39.941 7.547 4.752 3.732 1.682 5.786 51.363 Visualize Results
RC-LSTM-4dir [432] 7.905 4.466 35.921 7.223 4.557 2.950 1.849 5.854 42.848 Visualize Results
HAST [433] 9.185 5.116 42.360 6.698 4.956 4.345 1.614 5.856 54.781 Visualize Results
RC-LSTM-1dir [434] 7.939 4.486 36.069 7.183 4.551 2.991 1.881 5.869 42.936 Visualize Results
flownetnew [435] 7.860 4.539 34.909 7.550 4.772 2.921 1.970 5.872 41.820 Visualize Results
DIS-Fast [436] 10.127 5.905 44.541 8.503 6.142 4.162 2.174 5.925 59.698 Visualize Results
Back2FutureFlow_UFO [437] 8.814 5.031 39.647 7.153 4.880 3.904 1.752 5.961 50.725 Visualize Results
TV-L1 [438] 10.462 5.848 48.013 8.193 5.860 4.431 1.551 6.012 65.384 Visualize Results
FlowNetProbOut [439] 8.302 4.610 38.405 7.876 4.788 2.907 1.726 6.067 46.290 Visualize Results
DF-Beta [440] 9.196 4.765 45.327 6.829 4.603 3.677 1.706 6.085 53.877 Visualize Results
DF [441] 9.188 4.758 45.309 6.821 4.594 3.675 1.708 6.093 53.782 Visualize Results
IPOL_Brox [442] 9.198 4.869 44.479 6.856 4.682 3.789 1.679 6.106 53.956 Visualize Results
FlowNetC+OFR [443] 9.206 5.584 38.724 7.957 5.906 4.014 2.124 6.233 51.465 Visualize Results
FlowNetADF [444] 8.532 4.768 39.222 8.002 4.979 3.060 1.846 6.304 47.067 Visualize Results
DF-Auto [445] 9.723 5.200 46.594 7.483 5.027 3.988 1.705 6.311 57.743 Visualize Results
testS [446] 8.503 5.009 36.975 7.907 5.151 3.401 2.105 6.379 45.311 Visualize Results
Grts-Flow-V2 [447] 8.764 4.718 41.737 6.748 4.276 3.902 2.105 6.536 47.153 Visualize Results
H-1px [448] 10.148 4.454 56.545 6.832 4.306 3.637 2.173 6.606 58.262 Visualize Results
UnFlow [449] 10.219 6.061 44.110 8.407 5.828 4.665 1.742 6.689 60.765 Visualize Results
TVL1_RVC [450] 9.861 5.435 45.916 7.906 5.544 4.105 1.759 6.727 57.603 Visualize Results
TVL1_ROB [451] 9.861 5.435 45.916 7.906 5.545 4.105 1.759 6.727 57.603 Visualize Results
2bit-BM-tele [452] 10.978 5.793 53.220 7.710 5.603 4.814 2.338 6.959 63.521 Visualize Results
AnisoHuber.L1 [453] 11.927 7.323 49.366 9.464 7.692 5.929 1.155 7.966 74.796 Visualize Results
Steered-L1 [454] 12.277 7.489 51.200 9.143 7.683 6.369 1.254 8.198 76.703 Visualize Results
H+S_ROB [455] 12.451 8.230 46.801 9.968 8.497 7.220 2.909 8.739 68.643 Visualize Results
H+S_RVC [456] 12.147 8.035 45.599 9.487 8.204 7.172 3.421 8.892 63.199 Visualize Results
PosetOptimization [457] 11.961 6.281 58.181 7.275 5.620 6.151 3.271 8.917 62.365 Visualize Results
SimpleFlow [458] 13.364 8.620 51.949 10.872 8.884 7.171 1.475 9.582 81.350 Visualize Results
Model_model [459] 14.669 10.081 51.960 11.437 10.100 9.394 3.502 12.036 76.191 Visualize Results
AtrousFlow [460] 14.173 9.573 51.548 11.511 10.027 8.092 2.011 12.052 79.484 Visualize Results
BASELINE-Mean [461] 15.422 11.488 47.336 14.676 12.649 9.350 5.310 14.717 66.922 Visualize Results
WKSparse [462] 16.036 11.653 51.588 13.401 12.398 10.150 2.471 16.450 86.918 Visualize Results
AVG_FLOW_ROB [463] 18.799 14.422 54.251 16.903 15.516 12.457 4.566 19.946 86.008 Visualize Results
BASELINE-zero [464] 18.926 14.396 55.633 17.050 15.613 12.172 4.049 20.873 87.342 Visualize Results
C-2px [465] 44.062 37.047 101.160 37.366 36.580 37.093 34.342 35.847 112.424 Visualize Results
cascade [466] 244.308 241.872 264.095 235.130 235.952 231.744 248.193 229.933 260.281 Visualize Results


Metrics


EPE Endpoint error over the complete frames
EPE matched Endpoint error over regions that remain visible in adjacent frames
EPE unmatched Endpoint error over regions that are visible only in one of two adjacent frames
d0-10 Endpoint error over regions closer than 10 pixels to the nearest occlusion boundary
d10-60 Endpoint error over regions between 10 and 60 pixels apart from the nearest occlusion boundary
d60-140 Endpoint error over regions between 60 and 140 pixels apart from the nearest occlusion boundary
s0-10 Endpoint error over regions with velocities lower than 10 pixels per frame
s10-40 Endpoint error over regions with velocities between 10 and 40 pixels per frame
s40+ Endpoint error over regions with velocities larger than 40 pixels per frame
All error images are normalized to be in the range between 0 and 1.

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Anonymous. None
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Anonymous. htjwarp2
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Anonymous.
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Anonymous. 0.03s with a GTX 1080ti GPU.
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Anonymous. mask
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Junhwa Hur and Stefan Roth. Iterative Residual Refinement for Joint Optical Flow and Occlusion Estimation. CVPR 2019
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[193]
LiteFlowNet3-S
Tak-Wai Hui and Chen Change Loy. LiteFlowNet3: Resolving Correspondence Ambiguity for More Accurate Optical Flow Estimation, ECCV 2020.
[194]
LiteFlowNet3
Tak-Wai Hui and Chen Change Loy. LiteFlowNet3: Resolving Correspondence Ambiguity for More Accurate Optical Flow Estimation, ECCV 2020.
[195]
PMC-PWC_edge_loss
Congxuan Zhang, Cheng Feng, Zhen Chen, Weiming Hu, Ming Li, Parallel multiscale context-based edge-preserving optical flow estimation with occlusion detection, Signal Processing: Image Communication, Volume 101, 2022, doi: 10.1016/j.image.2021.116560
[196]
RichFlow-ft-fnl
Anonymous. final pass version
[197]
MaskFlownet-S
Shengyu Zhao, Yilun Sheng, Yue Dong, Eric I-Chao Chang, and Yan Xu. MaskFlownet: Asymmetric Feature Matching with Learnable Occlusion Mask, CVPR 2020 (Oral).
[198]
VCN-WARP
Anonymous.
[199]
PRichFlow
Anonymous.
[200]
GCA-Net-ft+
Anonymous. finetune GCA-Net with a better data augmentation method
[201]
SAMFL
Zhang Congxuan, Zhou Zhongkai, Chen Zhen, Hu Weming, Li Ming, Jiang Shaofeng. Self-attention-based Multiscale Feature Learning Optical Flow with Occlusion Feature Map Prediction, IEEE Transactions on Multimedia, 2021, DOI: 10.1109/TMM.2021.3096083.
[202]
GPNet
Anonymous.
[203]
ScopeFlow
Aviram Bar-Haim and Lior Wolf. ScopeFlow: Dynamic Scene Scoping for Optical Flow, CVPR 2020.
[204]
VCN+LCV
Taihong Xiao, Jinwei Yuan, Deqing Sun, Qifei Wang, Xin-Yu Zhang, Kehan Xu, Ming-Hsuan Yang. Learnable Cost Volume using the Cayley Representation, ECCV 2020
[205]
GCA-Net
Anonymous.
[206]
SENSE
Anonymous. TBA
[207]
PMC-PWC_without_edge_loss
Congxuan Zhang, Cheng Feng, Zhen Chen, Weiming Hu, Ming Li, Parallel multiscale context-based edge-preserving optical flow estimation with occlusion detection, Signal Processing: Image Communication, Volume 101, 2022, doi: 10.1016/j.image.2021.116560
[208]
RichFlow-ft
Anonymous.
[209]
VCN-OER
Anonymous.
[210]
CompactFlow
Anonymous. ICCV submission.
[211]
CompactFlow-woscv
Anonymous.
[212]
VCN
Gengshan Yang and Deva Ramanan. Volumetric Correspondence Networks for Optical Flow, NeurIPS 2019
[213]
less_iteration
Anonymous.
[214]
LiteFlowNet
Tak-Wai Hui, Xiaoou Tang, and Chen Change Loy. LiteFlowNet: A Lightweight Convolutional Neural Network for Optical Flow Estimation, CVPR 2018.
[215]
PWC_acn
Anonymous.
[216]
ProFlow
D. Maurer, A. Bruhn: ProFlow: Learning to Predict Optical Flow. BMVC 2018.
[217]
OF-OEF
Anonymous. Optical flow estimation combining with objects edge features
[218]
pwc_xx
[219]
MFF
Zhile Ren, Orazio Gallo, Deqing Sun, Ming-Hsuan Yang, Erik B. Sudderth and Jan Kautz: A Fusion Approach for Multi-Frame Optical Flow Estimation. IEEE Winter Conference on Applications of Computer Vision (WACV 2019)
[220]
OAS-Net
Lingtong Kong, Xiaohang Yang and Jie Yang. OAS-Net: Occlusion Aware Sampling Network for Accurate Optical Flow, ICASSP 2021.
[221]
A-A
Anonymous.
[222]
Pwc_ps
Anonymous.
[223]
AL-OF-r0.2
Shuai Yuan, Xian Sun, Hannah Kim, Shuzhi Yu, Carlo Tomasi. Optical Flow Training Under Limited Label Budget via Active Learning. (ECCV-2022)
[224]
CoT-AMFlow
H. Wang, R. Fan, and M. Liu. CoT-AMFlow: Adaptive Modulation Network with Co-Teaching Strategy for Unsupervised Optical Flow Estimation, CoRL 2020.
[225]
CVPR-1235
Anonymous.
[226]
PWC-Net+
Deqing Sun, Xiaodong Yang, Ming-Yu Liu, and Jan Kautz. Models Matter, So Does Training: An Empirical Study of CNNs for Optical Flow Estimation. TPAMI, to appear. arXiv link https://arxiv.org/abs/1809.05571
[227]
PWC-Net
Deqing Sun, Xiaodong Yang, Ming-Yu Liu, and Jan Kautz. PWC-Net: CNNs for Optical Flow Using Pyramid, Warping, and Cost Volume, CVPR 2018.
[228]
ProFlow_ROB
D. Maurer, A. Bruhn: ProFlow: Learning to Predict Optical Flow. BMVC 2018. (ROB setting)
[229]
VCN_RVC
Gengshan Yang and Deva Ramanan. Volumetric Correspondence Networks for Optical Flow, NeurIPS 2019
[230]
PWC-Net-OER
Anonymous.
[231]
Semantic_Lattice
Anne S. Wannenwetsch, Martin Kiefel, Peter V. Gehler, Stefan Roth. Learning Task-Specific Generalized Convolutions in the Permutohedral Lattice. GCPR 2019.
[232]
PWC-Net_RVC
Deqing Sun, Xiaodong Yang, Ming-Yu Liu, and Jan Kautz. PWC-Net: CNNs for Optical Flow Using Pyramid, Warping, and Cost Volume, CVPR 2018. Renamed from PWC-Net_ROB to PWC-Net_RVC.
[233]
DA_opticalflow
Anonymous.
[234]
StruPyNet-ft
Zefeng Sun, Hanli Wang, Yun Yi, and Qinyu Li, Structural Pyramid Network for Cascaded Optical Flow Estimation, The 26th International Conference on Multimedia Modeling (MMM’20) , Daejeon, Korea, Jan. 5-8, 2020.
[235]
PatchBatch-CENT+SD
Anonymous.
[236]
FlowFieldsCNN
C. Bailer, K Varanasi and D. Stricker. CNN-based Patch Matching for Optical Flow with Thresholded Hinge Embedding Loss. CVPR 2017.
[237]
DeepDiscreteFlow
F. Güney and A. Geiger. Deep Discrete Flow. Asian Conference on Computer Vision (ACCV) 2016.
[238]
FPCR-Net
Anonymous.
[239]
FPCR-Net2
Anonymous.
[240]
PWC-Net+KF
W. Bao, Y. Xiao, L. Chen, and Z. Gao. KalmanFlow 2.0: Efficient Video Optical Flow Estimation via Context-Aware Kalman Filtering. submitted to TIP.
[241]
Flownet2-IAER
Anonymous. Flownet2 combining with illumination adjustment and edge refinement
[242]
CompactFlowNet
Anonymous.
[243]
Flownet2-IA
Anonymous. Flownet2 combining with illumination adjustment
[244]
ADF-Scaleflow
Anonymous. Scaleflow trained by ADF58
[245]
PWC-Net+KF2
W. Bao, Y. Xiao, L. Chen, and Z. Gao. KalmanFlow 2.0: Efficient Video Optical Flow Estimation via Context-Aware Kalman Filtering. submitted to TIP.
[246]
ContinualFlow_ROB
Michal Neoral, Jan Šochman and Jiří Matas. Continual Occlusions and Optical Flow Estimation, ACCV 2018
[247]
STC-Flow
Anonymous.
[248]
FDFlowNet
Lingtong Kong and Jie Yang. FDFlowNet: Fast Optical Flow Estimation using a Deep Lightweight Network, ICIP 2020.
[249]
CAR_100
Anonymous.
[250]
Deep-EIP
Anonymous. End-2-End learning for energy based inpainting of optical flow. ACCV submission 572
[251]
MPIF
Anonymous. multi-level interpolation for optical flow estimation
[252]
HMFlow
HMFlow: Hybrid Matching Optical Flow Network for Small and Fast-Moving Objects
[253]
SfM-PM
D. Maurer, N. Marniok, B. Goldluecke, A. Bruhn: Structure-from-Motion-Aware PatchMatch for Adaptive Optical Flow Estimation. ECCV 2018.
[254]
MirrorFlow
Junhwa Hur and Stefan Roth. MirrorFlow: Exploiting Symmetries in Joint Optical Flow and Occlusion Estimation. ICCV 2017
[255]
IRR-PWC_RVC
RVC 2020 submission
[256]
PatchBatch+Inter
T. Schuster, L. Wolf and D. Gadot: Optical Flow Requires Multiple Strategies (but only one network). CVPR 2017.
[257]
Lavon
Anonymous.
[258]
SJTU_PAMI418
[259]
TIMCflow
Fei Yang, Yongmei Cheng, Joost Van de Weijer, Mikhail G. Mozerov. 'Improved Discrete Optical Flow Estimation with Triple Image Matching Cost', IEEE Access
[260]
F3-MPLF
Sathya N. Ravi, Yunyang Xiong, Lopamudra Mukherjee, Vikas Singh: Filter Flow made Practical: Massively Parallel and Lock-Free -- CVPR 2017
[261]
FlowNet2-ft-sintel
Anonymous. CVPR Submission #900
[262]
DCFlow+KF2
W. Bao, Y. Xiao, L. Chen, and Z. Gao. KalmanFlow 2.0: Efficient Video Optical Flow Estimation via Context-Aware Kalman Filtering. submitted to TIP.
[263]
RAFT_Chairs_Things
Anonymous.
[264]
ARFlow+LCT-Flow
ARFlow+LCT-Flow
[265]
UFlow
R. Jonschkowski, A. Stone, J. Barron, A. Gordon, K. Konolige, and A. Angelova. What Matters in Unsupervised Optical Flow. ECCV 2020. (Code is available)
[266]
RAFT-GT
Anonymous. CVPR 2021 submission
[267]
AL-OF-r0.1
Shuai Yuan, Xian Sun, Hannah Kim, Shuzhi Yu, Carlo Tomasi. Optical Flow Training Under Limited Label Budget via Active Learning. (ECCV-2022)
[268]
UlDENet
Anonymous.
[269]
FastFlow
Anonymous.
[270]
FullFlow+KF
W. Bao, Y. Xiao, L. Chen, and Z. Gao. Kalmanflow: Efficient Kalman Filtering for Video Optical Flow. ICIP 2018.
[271]
NccFlow
Anonymous.
[272]
CPM_AUG
Anonymous. CVPR 18 submission #1939
[273]
FlowFields++
R. Schuster, C. Bailer, O. Wasenmüller, D. Stricker. FlowFields++: Accurate Optical Flow Correspondences Meet Robust Interpolation. ICIP 2018
[274]
FlowFields+
C. Bailer, B. Taetz and D. Stricker. Flow Fields: Dense Correspondence Fields for Highly Accurate Large Displacement Optical Flow Estimation. T-PAMI.
[275]
UPFlow
[276]
GANFlow
Anonymous.
[277]
RicFlow
Yinlin Hu, Yunsong Li, Rui Song. Robust Interpolation of Correspondences for Large Displacement Optical Flow. CVPR 2017.
[278]
FullFlow
Q. Chen, V. Koltun. Full Flow: Optical Flow Estimation By Global Optimization over Regular Grids. CVPR 2016.
[279]
InterpoNet_df
S. Zweig, L Wolf. InterpoNet, A brain inspired neural network for optical flow dense interpolation. CVPR 2017.
[280]
risc
Anonymous.
[281]
CARflow
[282]
UnSAMFlow
Accepted by CVPR 2024
[283]
RICBCDN
Anonymous.
[284]
TVL1_LD_GF
V. Lazcano. TVL1 to handle large displacements using gradient patches. Parameter where optimized using PSO.
[285]
ricom20201202
Anonymous.
[286]
FastFlowNet
Lingtong Kong, Chunhua Shen and Jie Yang. FastFlowNet: A Lightweight Network for Fast Optical Flow Estimation, ICRA 2021.
[287]
CVENG22+RIC
Anonymous.
[288]
PGM-C
Anonymous
[289]
DCFlow+KF
W. Bao, Y. Xiao, L. Chen, and Z. Gao. KalmanFlow 2.0: Efficient Video Optical Flow Estimation via Context-Aware Kalman Filtering. submitted to TIP.
[290]
OIFlow
occlusion-inpainting Flow
[291]
F2PD_JJN
Anonymous. With Deformable Convolutional Networks
[292]
DCFlow
Jia Xu, René Ranftl, Vladlen Koltun. Accurate Optical Flow via Direct Cost Volume Processing. CVPR 2017.
[293]
FastFlow2
Anonymous.
[294]
CARflow-mv
Anonymous.
[295]
MR-Flow
J. Wulff, L. Sevilla-Lara, M. J. Black: Optical Flow in Mostly Rigid Scenes. CVPR 2017.
[296]
FlowSAC_dcf
Anonymous.
[297]
FastFlowNet-ft+
Anonymous.
[298]
IHBPFlow
Anonymous.
[299]
S2F-IF
Yanchao Yang, Stefano Soatto. S2F: Slow-To-Fast Interpolator Flow. CVPR 2017.
[300]
SPM-BPv2
Y. Li, D. Min, M. S. Brown, M. N. Do, and J. Lu. SPM-BP: Sped-up PatchMatch Belief Propagation for Continuous MRFs. ICCV 2015. Improved version. Details coming soon.
[301]
SegFlow73
Efficient Segmentation-Based PatchMatch for Large displacement Optical Flow Estimation. 2019 TCSVT. (d0=7,d1=3)(Matlab code is available.)
[302]
InterpoNet_ff
S. Zweig, L Wolf. InterpoNet, A brain inspired neural network for optical flow dense interpolation. CVPR 2017.
[303]
ARFlow-mv
Liang Liu, Jiangning Zhang, Ruifei He, Yong Liu, Yabiao Wang, Ying Tai, et al. Learning by Analogy: Reliable Supervision from Transformations for Unsupervised Optical Flow Estimation. CVPR 2020.
[304]
FlowNetC-MD
Anonymous.
[305]
ARFlow-base
Anonymous. ARFlow-base
[306]
PST
Anonymous. ACCV2018 submission #1195
[307]
MRDFlow
Anonymous.
[308]
ERFlow
Anonymous.
[309]
InterpoNet_cpm
S. Zweig, L Wolf. InterpoNet, A brain inspired neural network for optical flow dense interpolation. CVPR 2017.
[310]
WWWWWWAFPW
Anonymous. test for AFPW
[311]
GlobalPatchCollider
Shenlong Wang, Sean Fanello, Christoph Rhemann, Shahram Izadi and Pushmeet Kohli, The Global Patch Collider, CVPR, 2016
[312]
DefFlowP
Anonymous.
[313]
SegFlow193
Efficient Segmentation-Based PatchMatch for Large displacement Optical Flow Estimation. 2019 TCSVT. (d0=19,d1=3)(Matlab code is available.)
[314]
CPM2
Coarse-to-fine PatchMatch for dense correspondence, Yunsong Li, Yinlin Hu, Rui Song, Peng Rao, Yangli Wang, submitted to T-CSVT
[315]
ProbFlowFields
Anne S. Wannenwetsch, Margret Keuper, Stefan Roth. ProbFlow: Joint Optical Flow and Uncertainty Estimation. ICCV 2017.
[316]
FlowSAC_ff
Anonymous
[317]
ARFlow
Liang Liu, Jiangning Zhang, Ruifei He, Yong Liu, Yabiao Wang, Ying Tai, et al. Learning by Analogy: Reliable Supervision from Transformations for Unsupervised Optical Flow Estimation. CVPR 2020.
[318]
CVENG22+Epic
Anonymous.
[319]
AL-OF-r0.05
Shuai Yuan, Xian Sun, Hannah Kim, Shuzhi Yu, Carlo Tomasi. Optical Flow Training Under Limited Label Budget via Active Learning. (ECCV-2022)
[320]
DiscreteFlow+OIR
D. Maurer, M. Stoll, A. Bruhn: Order-Adaptive and Illumination Aware Variational Optical Flow Refinement. BMVC 2017.
[321]
InterpoNet_dm
S. Zweig, L Wolf. InterpoNet, A brain inspired neural network for optical flow dense interpolation. CVPR 2017.
[322]
tfFlowNet2+GLR
Anonymous.
[323]
ER-FLOW2
Anonymous. Adjusted ERFlow
[324]
EpicFlow
J. Revaud, P. Weinzaepfel, Z. Harchaoui and C. Schmid. EpicFlow: Edge-Preserving Interpolation of Correspondences for Optical Flow. CVPR 2015.
[325]
AutoScaler+
Anonymous. AutoScaler+
[326]
FlowFields
C. Bailer, B. Taetz and D. Stricker. Flow Fields: Dense Correspondence Fields for Highly Accurate Large Displacement Optical Flow Estimation. ICCV 2015.
[327]
MDFlow
Lingtong Kong and Jie Yang. MDFlow: Unsupervised Optical Flow Learning by Reliable Mutual Knowledge Distillation, TCSVT 2022.
[328]
CPM-Flow
Yinlin Hu, Rui Song, Yunsong Li. Efficient Coarse-to-Fine PatchMatch for Large Displacement Optical Flow. CVPR 2016.
[329]
EPIflow
Deep Epipolar Flow
[330]
TF+OFM
R. Kennedy and C.J. Taylor. Optical Flow with Geometric Occlusion Estimation and Fusion of Multiple Frames. EMMCVPR 2015.
[331]
SDFlow
Anonymous.
[332]
DDCNet_Multires_ft_sintel
DDCNet Multires fine tuned on Sintel
[333]
SparseFlow
Radu Timofte and Luc Van Gool. SparseFlow: Sparse Matching for Small to Large Displacement Optical Flow. WACV 2015
[334]
CNet
Anonymous.
[335]
DIP-Flow
D. Maurer, M. Stoll, A. Bruhn: Directional Priors for Multi-Frame Optical Flow. BMVC 2018.
[336]
PPM
Parametric PatchMatch, Fangjun Kuang, master thesis, 2017
[337]
UnsupSimFlow
Unsupervised Learning of Optical Flow with Deep Feature Similarity, ECCV 2020
[338]
DistillFlow
Anonymous. Unsupervise result
[339]
SegFlow113
Efficient Segmentation-Based PatchMatch for Large displacement Optical Flow Estimation. 2019 TCSVT. (d0=11,d1=3)(Matlab code is available.)
[340]
S2D-Matching
M. Leordeanu, A. Zanfir, C. Sminchisescu. Locally Affine Sparse-to-Dense Matching for Motion and Occlusion estimation. ICCV 2013
[341]
DiscreteFlow
M. Menze, C. Heipke and A. Geiger. Discrete Optimization for Optical Flow. GCPR 2015
[342]
Devon
Anonymous. CVPR submission #1906
[343]
Deep+R
B. Drayer and T. Brox. Combinatorial Regularization of Descriptor Matching for Optical Flow Estimation. BMVC 2015
[344]
ResPWCR_ROB
Anonymous.
[345]
DeepFlow2
J. Revaud, P. Weinzaepfel, Z. Harchaoui and C. Schmid. DeepMatching: Hierarchical Deformable Dense Matching. Submitted to IJCV.
[346]
SegFlow153
Efficient Segmentation-Based PatchMatch for Large displacement Optical Flow Estimation. 2019 TCSVT. (d0=15,d1=3)(Matlab code is available.)
[347]
SelFlow
Pengpeng Liu, Michael R. Lyu, Irwin King, Jia Xu. SelFlow: Self-Supervised Learning of Optical Flow (CVPR 2019)
[348]
DDCNet_stacked2
Anonymous. two times down-sampling of feature maps, 128 filters each layer, fine-tuned on sintel
[349]
HSVFlow
Syed Tafseer Haider Shah, Xiang Xuezhi, Harbin Engineering University. Photometric Invariance of Optical Flow With Color Space Transformations
[350]
MDFlow-Fast
Lingtong Kong and Jie Yang. MDFlow: Unsupervised Optical Flow Learning by Reliable Mutual Knowledge Distillation, TCSVT 2022.
[351]
SparseFlowFused
Radu Timofte and Luc Van Gool. SparseFlow: Sparse Matching for Small to Large Displacement Optical Flow. WACV 2015
[352]
FGI
Y. Li, D. Min, M. N. Do, and J. Lu. Fast Guided Global Interpolation for Depth and Motion. ECCV 2016
[353]
StruPyNet
Zefeng Sun, Hanli Wang, Yun Yi, and Qinyu Li, Structural Pyramid Network for Cascaded Optical Flow Estimation, The 26th International Conference on Multimedia Modeling (MMM’20) , Daejeon, Korea, Jan. 5-8, 2020.
[354]
OF_OCC_LD
V. Lazcano, L. Garrido, C. Ballester. Jointly Optical flow and Occlusion Estimation for images with Large Displacements.
[355]
FlowNet2
Anonymous. CVPR Submission #900
[356]
tfFlowNet2
Anonymous.
[357]
DMF_ROB
Baseline submission for ROB flow challenge: Deepflow with Deepmatching as prior
[358]
AugFNG_ROB
Anonymous.
[359]
DeepFlow
P. Weinzaepfel, J. Revaud, Z. Harchaoui and C. Schmid. DeepFlow: Large displacement optical flow with deep matching. ICCV 2013.
[360]
SegFlow33
Efficient Segmentation-Based PatchMatch for Large displacement Optical Flow Estimation. 2019 TCSVT. (d0=3, d1=3)(Matlab code is available.)
[361]
RLOF_DENSE
Jonas Geistert, Tobias Senst and Thomas Sikora, Robust Local Optical Flow: Dense Motion Vector Field Interpolation, PCS 2016
[362]
RGBFlow
Syed Tafseer Haider Shah, Xiang Xuezhi, Harbin Engineering University. Photometric Invariance of Optical Flow With Color Space Transformations
[363]
FF++_ROB
Accurate matching and robust interpolation. KITTI parameters as given by the paper. Edge detector trained on KITTI + Sintel + BSDS500.
[364]
NNF-Local
Anonymous. Large Displacement Optical Flow from Nearest Neighbor Fields
[365]
EPMNet
Anonymous. The high accuracy for both small and large motion estimation are mainly cause by two contributions: firstly, we present and implement an edge preserve patch match (EPM) layer that propagates self-similarity patterns in addition to offsets. The accuracy of optical flow prediction has greatly improved by this method. Secondly, we develop a course-to-fine network architecture to tackle large displacement estimation and introduce a residual flow method to solve small displacement estimation.
[366]
JOF
Zhang Congxuan, Ge Liyue, Chen Zhen, Li Ming, Liu Wen, Chen Hao. Refined TV-L1 Optical Flow Estimation Using Joint Filtering, IEEE Transactions on Multimedia, 2020, 22(2):349-364.
[367]
DDFlow
Pengpeng Liu, Irwin King, Michael R. Lyu, Jia Xu.  DDFlow: Learning Optical Flow with Unlabeled Data Distillation.  Thirty-Third AAAI Conference on Artificial Intelligence (AAAI), Jan 2019
[368]
PCA-Layers
J. Wulff and M. J. Black: Efficient sparse-to-dense optical flow estimation using a learned basis and layers. CVPR 2015.
[369]
SAnet
Anonymous.
[370]
AggregFlow
D. Fortun, P. Bouthemy and C. Kervrann. Aggregation of local parametric candidates and exemplar-based occlusion handling for optical flow. CVIU 2016
[371]
STDC-Flow
STDC-Flow: large displacement flow field estimation using similarity transformationbased dense correspondence, IET Computer Vision, 2020
[372]
WRTflow
We proposed a weighted regularization transform to reduce the influence of illumination variations of optical flow estimation. We submit it to TCSVT.
[373]
FALDOI
Roberto P.Palomares, Enric Meinhardt-Llopis, Coloma Ballester and Gloria Haro. FALDOI: A new minimization strategy for large displacement variational optical flow. To appear in JMIV
[374]
SegPM+Interpolation
SegPM+Interpolation
[375]
SPM-BP
Y. Li, D. Min, M. S. Brown, M. N. Do, and J. Lu. SPM-BP: Sped-up PatchMatch Belief Propagation for Continuous MRFs. ICCV 2015
[376]
H-v3
Anonymous.
[377]
PMF
J. Lu, Y. Li, H. Yang, D. Min, W. Eng, M. N. Do. PatchMatch Filter: Edge-Aware Filtering Meets Randomized Search for Visual Correspondence. TPAMI 2016
[378]
DDCNet_Stacked
Anonymous. Two blocks of simple DDCNet
[379]
Classic+NL
D. Sun, S. Roth, and M. Black. Secrets of optical flow estimation and their principles. CVPR, pages 2432-2439, 2010.
[380]
PCA-Flow
J. Wulff and M. J. Black: Efficient sparse-to-dense optical flow estimation using a learned basis and layers. CVPR 2015.
[381]
IIOF-NLDP
Dinh-Hoan Trinh, Walter Blondel, and Christian Daul. A General Form of Illumination-Invariant Descriptors in Variational Optical Flow Estimation. ICIP 2017.
[382]
FlowNetS+ft+v
Anonymous. ICCV submission 235
[383]
DSPyNet+ft
Zefeng Sun and Hanli Wang, Deeper Spatial Pyramid Network with Refined Up-Sampling for Optical Flow Estimation, 2018 Pacific Rim Conference on Multimedia (PCM'18), LNCS 11164, pp. 492-501, 2018.
[384]
Classic+NL-fast
D. Sun, S. Roth, and M. Black. Secrets of optical flow estimation and their principles. CVPR, pages 2432-2439, 2010.
[385]
GeoFlow
Anonymous. Submission to Electrocnic Letters in 2018, we propose a simple but novel algorithm to achieve global belief propagation called geodesic-based Probability Propagation for optical flow estimation.
[386]
ROF-NND
Sharib Ali, Christian Daul, Ernest Galbrun, Walter Blondel, Illumination invariant optical flow using neighborhood descriptors, Computer Vision and Image Understanding, Available online 17 December 2015, ISSN 1077-3142.
[387]
BOOM+PF.XY
Fast optical flow method (0.54s single core i7 @3.1GHz) that employs the permeability filter to interpolate NNF correspondences. The NNF is an improved version of CPM that uses a new binary descriptor termed BOOM instead of SiftFlow in order to efficiently compute matching costs. Publication: Towards Edge-Aware Spatio-Temporal Filtering in Real-Time. M. Schaffner, F. Scheidegger, L. Cavigelli, H. Kaeslin, L. Benini and A. Smolic. Accepted for publication in Trans. on Image Processing (TIP), 2017. DOI: 10.1109/TIP.2017.2757259
[388]
SVFilterOh
Mohamed A. Helala, Faisal Z. Qureshi, Fast Estimation of Large Displacement Optical Flow Using Dominant Motion Patterns & Sub-Volume PatchMatch Filtering, CRV 2017
[389]
NLTGV-SC
R. Ranftl, K. Bredies, T. Pock. Non-Local Total Generalized Variation for Optical Flow Estimation, ECCV 2014
[390]
BOOM+PF.XYT
Fast optical flow method (0.59s single core i7 @3.1GHz) that employs the permeability filter to interpolate NNF correspondences. The NNF is an improved version of CPM that uses a new binary descriptor termed BOOM instead of SiftFlow in order to efficiently compute matching costs. Publication: Towards Edge-Aware Spatio-Temporal Filtering in Real-Time. M. Schaffner, F. Scheidegger, L. Cavigelli, H. Kaeslin, L. Benini and A. Smolic. Accepted for publication in Trans. on Image Processing (TIP), 2017. DOI: 10.1109/TIP.2017.2757259
[391]
SFL
Jingchun Cheng, Yi-Hsuan, Tsai, Shengjin Wang, Ming-Hsuan Yang. SegFlow: Joint Learning for Video Object Segmentation and Optical Flow. ICCV 2017
[392]
PH-Flow
Jiaolong Yang and Hongdong Li. Dense, Accurate Optical Flow Estimation with Piecewise Parametric Model. CVPR 2015
[393]
ZZZ
Anonymous.
[394]
FC-2Layers-FF
D. Sun, J. Wulff, E. Sudderth, H. Pfister, M.J. Black. A fully connected layered model of foreground and background flow. CVPR 2013
[395]
LDOF
T. Brox, J. Malik. IEEE Transactions on Pattern Analysis and Machine Intelligence, 33(3): 500-513, 2011.
[396]
DictFlowS
Anonymous.
[397]
DDCNet_B1_ft-sintel
DDCNet B1 finetuned on Sintel
[398]
EgFlow-cl
Anonymous. edge-guided, small parameter optical flow network based on CNN
[399]
ICALD
M. Stoll, D. Maurer, S. Volz and A. Bruhn. Illumination-Aware Large Displacement Optical Flow. EMMCVPR 2017.
[400]
DDCNet_B0_tf_sintel
Anonymous. DDCNet_B0 fine-tuned on Sintel
[401]
EPPM
L. Bao, Q. Yang, and H. Jin. Fast Edge-Preserving PatchMatch for Large Displacement Optical Flow. CVPR 2014.
[402]
PatchWMF-OF
Zhigang Tu, Coert Van Gemeren and Remco C. Veltkamp. Improved Color Patch Similarity Measure Based Weighted Median Filter. ACCV2014
[403]
ContFusion
M. Stoll, D. Maurer, and A. Bruhn. Variational Large Displacement Optical Flow without Feature Matches. EMMCVPR 2017.
[404]
LocalLayering
D. Sun, C. Liu, and H. Pfister. Local Layering for Joint Motion Estimation and Occlusion Detection. CVPR 2014.
[405]
TVL1_BWMFilter
Balanced Weighted Median Filter and Bilateral Filter.
[406]
AGIF+OF
Anonymous. Signal Processing 2015
[407]
M-1px
Anonymous.
[408]
WLIF-Flow
Z. Tu, R. Poppe, and R. C. Veltkamp. Weighted local intensity fusion method for variational optical flow estimation.Pattern Recognition,2015
[409]
FlowNetC+ft+v
Anonymous. ICCV sumbmission 235
[410]
AOD
[411]
Classic+NLP
D. Sun, S. Roth, and M. Black. A Quantitative Analysis of Current Practices in Optical Flow Estimation and The Principles behind Them. International Journal of Computer Vision (IJCV), 106(2):115-137, 2014.
[412]
Classic++
D. Sun, S. Roth, and M. Black. Secrets of optical flow estimation and their principles. CVPR, pages 2432-2439, 2010.
[413]
MLDP-OF
M. Mohamed, H. Rashwan, B. Mertsching, M. Garcia, and D. Puig. Illumination-robust optical flow approach using local directional pattern. Accepted in IEEE TCSVT 2014.
[414]
TV-L1+EM
V. Lazcano. EXHAUSTIVE MATCHING EMPIRICAL STUDY FOR IMPROVING THE MOTION FIELD ESTIMATION
[415]
FAOP-Flow
Anonymous.
[416]
Data-Flow
Anonymous. CSAD data cost + second order smoothness
[417]
Horn+Schunck
A modern Matlab implementation of the Horn & Schunck method by Deqing Sun.
[418]
WOLF_ROB
[419]
Channel-Flow
L. Sevilla-Lara, D. Sun, E. Learned-Miller, and M. Black. Optical Flow Estimation with Channel Constancy. ECCV, pages 423-438, 2014.
[420]
AnyFlow
Anonymous. PAMI pending review
[421]
MDP-Flow2
L. Xu, J. Jia, and Y. Matsushita. Motion detail preserving optical flow estimation. PAMI 34(9):1744-1757, 2012.
[422]
CPNFlow
Conditional Prior Networks for Optical Flow, Yanchao Yang, Stefano Soatto; The European Conference on Computer Vision (ECCV), 2018, pp. 271-287
[423]
COF_2019
H. Zimmer, A. Bruhn, J. Weickert, L. Valgaerts, A. Salgado, B. Rosenhahn, and H.-P. Seidel. Complementary optic flow. EMMCVPR 2009.
[424]
SPyNet+ft
Ranjan, Anurag and Black, Michael J., Optical Flow Estimation using a Spatial Pyramid Network, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, 2017
[425]
SPyNet
Ranjan, Anurag and Black, Michael J., Optical Flow Estimation using a Spatial Pyramid Network, Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, 2017
[426]
COF
H. Zimmer, A. Bruhn, J. Weickert, L. Valgaerts, A. Salgado, B. Rosenhahn, and H.-P. Seidel. Complementary optic flow. EMMCVPR 2009.
[427]
OAR-Flow
D. Maurer, M. Stoll, A. Bruhn: Order-Adaptive Regularisation for Variational Optical Flow: Global, Local and in Between. SSVM 2017.
[428]
DSPyNet
Zefeng Sun and Hanli Wang, Deeper Spatial Pyramid Network with Refined Up-Sampling for Optical Flow Estimation, 2018 Pacific Rim Conference on Multimedia (PCM'18), LNCS 11164, pp. 492-501, 2018.
[429]
OatNet01
Anonymous.
[430]
ComponentFusion
Anonymous. Fast Optical Flow by Component Fusion. Submitted to ECCV 2014. Paper ID 941.
[431]
HCOF+multi
R. Kennedy and C. J. Taylor. Hierarchically-Constrained Optical Flow. CVPR 2015.
[432]
RC-LSTM-4dir
Learning Contextual Dependencies for Optical Flow with Recurrent Neural Networks (ACCV 2016)
[433]
HAST
Yinlin Hu, Rui Song, Yunsong Li, Peng Rao, Yangli Wang. Highly Accurate Optical Flow Estimation on Superpixel Tree. Image and Vision Computing (IVC), 2016
[434]
RC-LSTM-1dir
Learning Contextual Dependencies for Optical Flow with Recurrent Neural Networks (ACCV 2016)
[435]
flownetnew
[436]
DIS-Fast
T. Kroeger, R. Timofte, D. Dai, L. Van Gool, Fast Optical Flow using Dense Inverse Search. ECCV 2016. Run-time: 0.023 s (20ms preprocessing, 3ms flow computation). Using operating point 2 of the paper.
[437]
Back2FutureFlow_UFO
J. Janai, F. Güney, A. Ranjan, M. Black and A. Geiger. Unsupervised Learning of Multi-Frame Optical Flow with Occlusions. ECCV, 2018.
[438]
TV-L1
Anonymous. It is a well-known model that uses TV-L1 (coupled) as the regularization term and an L1 data term.
[439]
FlowNetProbOut
Lightweight Probabilistic Deep Networks
[440]
DF-Beta
Nelson Monzón, Agustín Salgado and Javier Sánchez. Regularization Strategies for Discontinuity-Preserving Optical Flow Methods. IEEE Transactions on Image Processing, Vol 25(4), pp. 1580 - 1591, 2016
[441]
DF
Nelson Monzón, Agustín Salgado and Javier Sánchez. Regularization Strategies for Discontinuity-Preserving Optical Flow Methods. IEEE Transactions on Image Processing, Vol 25(4), pp. 1580 - 1591, 2016
[442]
IPOL_Brox
J. Sánchez, N. Monzón, and A. Salgado, Robust Optical Flow Estimation, Image Processing On Line (IPOL), 3 (2013), pp. 252–270.
[443]
FlowNetC+OFR
Anonymous.
[444]
FlowNetADF
Lightweight Probabilistic Deep Networks
[445]
DF-Auto
Nelson Monzón, Agustín Salgado and Javier Sánchez. Regularization Strategies for Discontinuity-Preserving Optical Flow Methods. IEEE Transactions on Image Processing, Vol 25(4), pp. 1580 - 1591, 2016
[446]
testS
[447]
Grts-Flow-V2
En Zhu, Yuanwei Li, Yanling Shi. Fast Optical Flow Estimation without Parallel Architectures. TCSVT
[448]
H-1px
Anonymous.
[449]
UnFlow
Anonymous.
[450]
TVL1_RVC
RVC 2020 baseline submission, based on: J. Sanchez, E. Meinhardt-Llopis, and G. Facciolo
[451]
TVL1_ROB
Baseline submission for the robust vision flow challenge: TV-L1 Optical Flow Estimation
[452]
2bit-BM-tele
Rui Xu & David Taubman, Robust Dense Block-Based Motion Estimation Using a Two-Bit Transform on a Laplacian Pyramid, ICIP 2013 +telescopic search
[453]
AnisoHuber.L1
M. Werlberger, W. Trobin, T. Pock, A. Wedel, D. Cremers, and H. Bischof. Anisotropic Huber-L1 optical flow. BMVC 2009.
[454]
Steered-L1
Anonymous.
[455]
H+S_ROB
Baseline submission for the ROB flow challenge: Horn-Schunck Optical Flow with a Multi-Scale Strategy
[456]
H+S_RVC
RVC 2020 baseline submission, based on: E. Meinhardt-Llopis, J. Sanchez, and D. Kondermann.
[457]
PosetOptimization
Anonymous.
[458]
SimpleFlow
M. W. Tao, J. Bai, P. Kohli, and S. Paris. "SimpleFlow: A Non-iterative, Sublinear Optical Flow Algorithm". Computer Graphics Forum (Eurographics 2012), 2012. (OpenCV 2.4.5 Implementation, parameters provided by OpenCV sample)
[459]
Model_model
Anonymous. this is a model
[460]
AtrousFlow
Anonymous. Real-time dense optical flow using CUDA
[461]
BASELINE-Mean
[462]
WKSparse
[463]
AVG_FLOW_ROB
Average flow field of ROB2018 training set. No image information used!
[464]
BASELINE-zero
[465]
C-2px
Anonymous.
[466]
cascade
Anonymous.