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Learning to Segment Rigid Motions from Two Frames

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Appearance-based detectors achieve remarkable performance on common scenes, but tend to fail for scenarios lack of training data. Geometric motion segmentation algorithms, however, generalize to novel scenes, but have yet to achieve comparable performance to appearance-based ones, due to noisy motion estimations and degenerate motion configurations. To combine the best of both worlds, we propose a modular network, whose architecture is motivated by a geometric analysis of what independent object motions can be recovered from an egomotion field. It takes two consecutive frames as input and predicts segmentation masks for the background and multiple rigidly moving objects, which are then parameterized by 3D rigid transformations. Our method achieves state-of-the-art performance for rigid motion segmentation on KITTI and Sintel. The inferred rigid motions lead to a significant improvement for depth and scene flow estimation. At the time of submission, our method ranked 1st on KITTI scene flow leaderboard, out-performing the best published method (scene flow error: 4.89% vs 6.31%).

Gengshan Yang, Deva Ramanan• 2021

Related benchmarks

TaskDatasetResultRank
Scene FlowKITTI Scene Flow 2015 (test)
D1 Score (All)1.89
28
Rigidity EstimationKITTI sceneflow (test)
Object IoU90.71
13
Scene FlowKITTI Scene Flow (test)
D1 Error (noc)1.7
12
Monocular depth and scene flow estimationKITTI 2015 (train)
D1 Score16.98
6
Stereo Scene Flow EstimationKITTI (benchmark)
D11.89
5
Monocular depth and scene flow estimationSintel (330 frame pairs)
D1 Score38.29
3
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