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Just Go with the Flow: Self-Supervised Scene Flow Estimation

About

When interacting with highly dynamic environments, scene flow allows autonomous systems to reason about the non-rigid motion of multiple independent objects. This is of particular interest in the field of autonomous driving, in which many cars, people, bicycles, and other objects need to be accurately tracked. Current state-of-the-art methods require annotated scene flow data from autonomous driving scenes to train scene flow networks with supervised learning. As an alternative, we present a method of training scene flow that uses two self-supervised losses, based on nearest neighbors and cycle consistency. These self-supervised losses allow us to train our method on large unlabeled autonomous driving datasets; the resulting method matches current state-of-the-art supervised performance using no real world annotations and exceeds state-of-the-art performance when combining our self-supervised approach with supervised learning on a smaller labeled dataset.

Himangi Mittal, Brian Okorn, David Held• 2019

Related benchmarks

TaskDatasetResultRank
Scene Flow EstimationKITTI
EPE (m)0.122
34
Scene Flow EstimationKITTI (test)
AS47.92
28
Point cloud registrationPVT def -> 2-scale rnd. field
TRE3.93
13
3D Scene Flow EstimationArgoverse Scene Flow 3 (test)
EPE3D0.652
12
3D Scene Flow EstimationnuScenes Scene Flow 2 (test)
EPE3D0.8422
12
3D Scene Flow EstimationLiDAR KITTI Scene Flow 10 (test)
EPE3D0.9773
12
Point cloud registrationPVT def -> rigid
TRE6.47
11
Scene Flow EstimationVoD (View-of-Delft) (test)
EPE (m)0.375
9
Scene Flow EstimationKITTI_dagger (test)
EPE0.105
2
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