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📄 Abstract
Abstract: Adverse weather conditions such as snow, fog, and rain pose significant
challenges to LiDAR-based perception models by introducing noise and corrupting
point cloud measurements. To address this issue, we propose TripleMixer, a
robust and efficient point cloud denoising network that integrates spatial,
frequency, and channel-wise processing through three specialized mixer modules.
TripleMixer effectively suppresses high-frequency noise while preserving
essential geometric structures and can be seamlessly deployed as a
plug-and-play module within existing LiDAR perception pipelines. To support the
development and evaluation of denoising methods, we construct two large-scale
simulated datasets, Weather-KITTI and Weather-NuScenes, covering diverse
weather scenarios with dense point-wise semantic and noise annotations. Based
on these datasets, we establish four benchmarks: Denoising, Semantic
Segmentation (SS), Place Recognition (PR), and Object Detection (OD). These
benchmarks enable systematic evaluation of denoising generalization,
transferability, and downstream impact under both simulated and real-world
adverse weather conditions. Extensive experiments demonstrate that TripleMixer
achieves state-of-the-art denoising performance and yields substantial
improvements across all downstream tasks without requiring retraining. Our
results highlight the potential of denoising as a task-agnostic preprocessing
strategy to enhance LiDAR robustness in real-world autonomous driving
applications.