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Papers/DeFlow: Decoder of Scene Flow Network in Autonomous Driving

DeFlow: Decoder of Scene Flow Network in Autonomous Driving

Qingwen Zhang, Yi Yang, Heng Fang, Ruoyu Geng, Patric Jensfelt

2024-01-29Scene Flow EstimationAutonomous Driving
PaperPDFCodeCodeCode(official)Code

Abstract

Scene flow estimation determines a scene's 3D motion field, by predicting the motion of points in the scene, especially for aiding tasks in autonomous driving. Many networks with large-scale point clouds as input use voxelization to create a pseudo-image for real-time running. However, the voxelization process often results in the loss of point-specific features. This gives rise to a challenge in recovering those features for scene flow tasks. Our paper introduces DeFlow which enables a transition from voxel-based features to point features using Gated Recurrent Unit (GRU) refinement. To further enhance scene flow estimation performance, we formulate a novel loss function that accounts for the data imbalance between static and dynamic points. Evaluations on the Argoverse 2 scene flow task reveal that DeFlow achieves state-of-the-art results on large-scale point cloud data, demonstrating that our network has better performance and efficiency compared to others. The code is open-sourced at https://github.com/KTH-RPL/deflow.

Results

TaskDatasetMetricValueModel
Scene Flow EstimationArgoverse 2EPE 3-Way0.034295DeFlow
Scene Flow EstimationArgoverse 2EPE Background Static0.004561DeFlow
Scene Flow EstimationArgoverse 2EPE Foreground Dynamic0.073231DeFlow
Scene Flow EstimationArgoverse 2EPE Foreground Static0.025093DeFlow

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