FlowFields++: Accurate Optical Flow Correspondences Meet Robust Interpolation
About
Optical Flow algorithms are of high importance for many applications. Recently, the Flow Field algorithm and its modifications have shown remarkable results, as they have been evaluated with top accuracy on different data sets. In our analysis of the algorithm we have found that it produces accurate sparse matches, but there is room for improvement in the interpolation. Thus, we propose in this paper FlowFields++, where we combine the accurate matches of Flow Fields with a robust interpolation. In addition, we propose improved variational optimization as post-processing. Our new algorithm is evaluated on the challenging KITTI and MPI Sintel data sets with public top results on both benchmarks.
Ren\'e Schuster, Christian Bailer, Oliver Wasenm\"uller, Didier Stricker• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Optical Flow | MPI Sintel Clean (test) | AEE3.953 | 158 | |
| Optical Flow | MPI-Sintel final (test) | EPE5.49 | 137 | |
| Optical Flow Estimation | Sintel clean (test) | EPE2.94 | 103 | |
| Optical Flow Estimation | Sintel Final (test) | EPE5.49 | 101 | |
| Optical Flow | KITTI 2015 (test) | Fl Error (All)15.97 | 95 | |
| Optical Flow Estimation | KITTI 2015 (test) | Fl-all14.82 | 91 | |
| Optical Flow Estimation | Middlebury | Rank3 | 11 | |
| Optical Flow Estimation | MPI Sintel | Rank5 | 11 | |
| Optical Flow Estimation | HD1K | Rank6 | 11 | |
| Optical Flow Estimation | KITTI | Rank5 | 11 |
Showing 10 of 10 rows