IDSOR: Intensity- and Distance-Aware Statistical Outlier Removal for Weather-Robust LiDAR Point Clouds
Chenyang Yan, Mats Bengtsson

TL;DR
This paper introduces IDSOR, a novel range-adaptive filtering method that effectively removes weather-induced noise from LiDAR point clouds by leveraging intensity and distance cues, improving perception in adverse weather conditions.
Contribution
The paper presents a new weather-aware outlier removal technique that adaptively suppresses weather artifacts while preserving scene details without manual tuning.
Findings
IDSOR achieves over 90% precision and recall on WADS dataset.
The method effectively suppresses weather-induced points while maintaining structural details.
Experimental results show improved robustness in adverse weather conditions.
Abstract
LiDAR point clouds captured in rain or snow are often corrupted by weather-induced returns, which can degrade perception and safety-critical scene understanding. This paper proposes Intensity- and Distance-Aware Statistical Outlier Removal (IDSOR), a range-adaptive filtering method that jointly exploits intensity cues and neighborhood sparsity. By incorporating an empirical, range-dependent distribution of weather returns into the threshold design, IDSOR suppresses weather-induced points while preserving fine structural details without cumbersome manual parameter tuning. We also propose a variant that uses a previously proposed method to estimate the weather return distribution from data, and integrates it into IDSOR. Experiments on simulation-augmented level-crossing measurements and on the Winter Adverse Driving dataset (WADS) demonstrate that IDSOR achieves a favorable…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Robotics and Sensor-Based Localization · Advanced Optical Sensing Technologies
