Robust point cloud parsing under all-weather conditions is crucial to level-5 autonomy in autonomous driving. However, how to learn a universal 3D semantic segmentation (3DSS) model is largely neglected as most existing benchmarks are dominated by point clouds captured under normal weather. We introduce SemanticSTF, an adverse-weather point cloud dataset that provides dense point-level annotations and allows to study 3DSS under various adverse weather conditions. We study all-weather 3DSS modeling under two setups: 1) domain adaptive 3DSS that adapts from normal-weather data to adverse-weather data; 2) domain generalizable 3DSS that learns all-weather 3DSS models from normal-weather data. Our studies reveal the challenge while existing 3DSS methods encounter adverse-weather data, showing the great value of SemanticSTF in steering the future endeavor along this very meaningful research direction. In addition, we design a domain randomization technique that alternatively randomizes the geometry styles of point clouds and aggregates their embeddings, ultimately leading to a generalizable model that can improve 3DSS under various adverse weather effectively. The SemanticSTF and related codes are available at \url{https://github.com/xiaoaoran/SemanticSTF}.
3D Semantic Segmentation in the Wild: Learning Generalized Models for Adverse-Condition Point Clouds
A new dataset, SemanticSTF, is introduced for robust 3D semantic segmentation under adverse weather conditions, and domain randomization is used to enhance model generalizability.
- Year
- 2023
- Venue
- CVPR 2023 1
- Authors
- 9
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2304.00690ARXIV-DEFAULT
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