NeuralSVCD for Efficient Swept Volume Collision Detection

Published: 08 Aug 2025, Last Modified: 16 Sept 2025CoRL 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Neural swept-volume collision detection, Motion planning
Abstract: Robot manipulation in unstructured environments requires efficient and reliable Swept Volume Collision Detection (SVCD) for safe motion planning. Traditional discrete methods potentially miss collisions between these points, whereas SVCD continuously checks for collisions along the entire trajectory. Existing SVCD methods typically face a trade-off between efficiency and accuracy, limiting practical use. In this paper, we introduce NeuralSVCD, a novel neural encoder-decoder architecture tailored to overcome this trade-off. Our approach leverages shape locality and temporal locality through distributed geometric representations and temporal optimization. This enhances computational efficiency without sacrificing accuracy. Comprehensive experiments show that NeuralSVCD consistently outperforms existing state-of-the-art SVCD methods in terms of both collision detection accuracy and computational efficiency, demonstrating its robust applicability across diverse robotic manipulation scenarios. Code and videos are available at https://neuralsvcd.github.io/.
Supplementary Material: zip
Spotlight: mp4
Submission Number: 938
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