LIORNet: Self-Supervised LiDAR Snow Removal Framework for Autonomous Driving under Adverse Weather Conditions
Ji-il Park, Inwook Shim

TL;DR
LIORNet is a self-supervised LiDAR snow removal framework that effectively filters noise in adverse weather, improving perception accuracy for autonomous driving without manual annotations.
Contribution
It introduces a novel self-supervised learning approach combining multiple cues to distinguish noise from environmental features in LiDAR data under snow conditions.
Findings
Outperforms state-of-the-art filters in accuracy
Operates faster with real-time potential
Effectively preserves environmental details
Abstract
LiDAR sensors provide high-resolution 3D perception and long-range detection, making them indispensable for autonomous driving and robotics. However, their performance significantly degrades under adverse weather conditions such as snow, rain, and fog, where spurious noise points dominate the point cloud and lead to false perception. To address this problem, various approaches have been proposed: distance-based filters exploiting spatial sparsity, intensity-based filters leveraging reflectance distributions, and learning-based methods that adapt to complex environments. Nevertheless, distance-based methods struggle to distinguish valid object points from noise, intensity-based methods often rely on fixed thresholds that lack adaptability to changing conditions, and learning-based methods suffer from the high cost of annotation, limited generalization, and computational overhead. In this…
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Taxonomy
TopicsAdvanced Optical Sensing Technologies · Advanced Neural Network Applications · Remote Sensing and LiDAR Applications
