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arxiv 2310.16542 v3 pith:VF6WP3UO submitted 2023-10-25 cs.CV cs.RO

ParisLuco3D: A high-quality target dataset for domain generalization of LiDAR perception

classification cs.CV cs.RO
keywords lidardatasetparisluco3dperceptionbenchmarksevaluationinformationperformance
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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LiDAR is an essential sensor for autonomous driving by collecting precise geometric information regarding a scene. %Exploiting this information for perception is interesting as the amount of available data increases. As the performance of various LiDAR perception tasks has improved, generalizations to new environments and sensors has emerged to test these optimized models in real-world conditions. This paper provides a novel dataset, ParisLuco3D, specifically designed for cross-domain evaluation to make it easier to evaluate the performance utilizing various source datasets. Alongside the dataset, online benchmarks for LiDAR semantic segmentation, LiDAR object detection, and LiDAR tracking are provided to ensure a fair comparison across methods. The ParisLuco3D dataset, evaluation scripts, and links to benchmarks can be found at the following website:https://npm3d.fr/parisluco3d

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