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Weakly Supervised Learning of Rigid 3D Scene Flow

About

We propose a data-driven scene flow estimation algorithm exploiting the observation that many 3D scenes can be explained by a collection of agents moving as rigid bodies. At the core of our method lies a deep architecture able to reason at the \textbf{object-level} by considering 3D scene flow in conjunction with other 3D tasks. This object level abstraction, enables us to relax the requirement for dense scene flow supervision with simpler binary background segmentation mask and ego-motion annotations. Our mild supervision requirements make our method well suited for recently released massive data collections for autonomous driving, which do not contain dense scene flow annotations. As output, our model provides low-level cues like pointwise flow and higher-level cues such as holistic scene understanding at the level of rigid objects. We further propose a test-time optimization refining the predicted rigid scene flow. We showcase the effectiveness and generalization capacity of our method on four different autonomous driving datasets. We release our source code and pre-trained models under \url{github.com/zgojcic/Rigid3DSceneFlow}.

Zan Gojcic, Or Litany, Andreas Wieser, Leonidas J. Guibas, Tolga Birdal• 2021

Related benchmarks

TaskDatasetResultRank
Scene Flow EstimationFT3Ds (test)
EPE0.052
47
LiDAR Scene Flow EstimationArgoverse v2 (val)
EPE (m) - Dynamic Foreground0.155
23
3D Scene Flow EstimationLiDAR KITTI Scene Flow 10 (test)
EPE3D0.094
12
3D Scene Flow EstimationArgoverse Scene Flow 3 (test)
EPE3D0.416
12
Scene Flow EstimationWaymo Open
Threeway EPE0.059
10
3D Scene Flow EstimationArgoverse (test)
EPE3D0.416
10
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