CVAug 8, 2023

DELFlow: Dense Efficient Learning of Scene Flow for Large-Scale Point Clouds

Berkeley
arXiv:2308.04383v220 citationsh-index: 91
Originality Highly original
AI Analysis

This improves scene flow estimation for applications like autonomous driving and robotics by making it more efficient and accurate.

The paper tackles the problem of scene flow estimation for large-scale point clouds by addressing memory inefficiency and feature fusion limitations, achieving state-of-the-art performance on FlyingThings3D and KITTI datasets.

Point clouds are naturally sparse, while image pixels are dense. The inconsistency limits feature fusion from both modalities for point-wise scene flow estimation. Previous methods rarely predict scene flow from the entire point clouds of the scene with one-time inference due to the memory inefficiency and heavy overhead from distance calculation and sorting involved in commonly used farthest point sampling, KNN, and ball query algorithms for local feature aggregation. To mitigate these issues in scene flow learning, we regularize raw points to a dense format by storing 3D coordinates in 2D grids. Unlike the sampling operation commonly used in existing works, the dense 2D representation 1) preserves most points in the given scene, 2) brings in a significant boost of efficiency, and 3) eliminates the density gap between points and pixels, allowing us to perform effective feature fusion. We also present a novel warping projection technique to alleviate the information loss problem resulting from the fact that multiple points could be mapped into one grid during projection when computing cost volume. Sufficient experiments demonstrate the efficiency and effectiveness of our method, outperforming the prior-arts on the FlyingThings3D and KITTI dataset.

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