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Main Authors: Piroli, Aldi, Dallabetta, Vinzenz, Kopp, Johannes, Walessa, Marc, Meissner, Daniel, Dietmayer, Klaus
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.09906
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author Piroli, Aldi
Dallabetta, Vinzenz
Kopp, Johannes
Walessa, Marc
Meissner, Daniel
Dietmayer, Klaus
author_facet Piroli, Aldi
Dallabetta, Vinzenz
Kopp, Johannes
Walessa, Marc
Meissner, Daniel
Dietmayer, Klaus
contents Adverse weather conditions can severely affect the performance of LiDAR sensors by introducing unwanted noise in the measurements. Therefore, differentiating between noise and valid points is crucial for the reliable use of these sensors. Current approaches for detecting adverse weather points require large amounts of labeled data, which can be difficult and expensive to obtain. This paper proposes a label-efficient approach to segment LiDAR point clouds in adverse weather. We develop a framework that uses few-shot semantic segmentation to learn to segment adverse weather points from only a few labeled examples. Then, we use a semi-supervised learning approach to generate pseudo-labels for unlabelled point clouds, significantly increasing the amount of training data without requiring any additional labeling. We also integrate good weather data in our training pipeline, allowing for high performance in both good and adverse weather conditions. Results on real and synthetic datasets show that our method performs well in detecting snow, fog, and spray. Furthermore, we achieve competitive performance against fully supervised methods while using only a fraction of labeled data.
format Preprint
id arxiv_https___arxiv_org_abs_2406_09906
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Label-Efficient Semantic Segmentation of LiDAR Point Clouds in Adverse Weather Conditions
Piroli, Aldi
Dallabetta, Vinzenz
Kopp, Johannes
Walessa, Marc
Meissner, Daniel
Dietmayer, Klaus
Computer Vision and Pattern Recognition
Adverse weather conditions can severely affect the performance of LiDAR sensors by introducing unwanted noise in the measurements. Therefore, differentiating between noise and valid points is crucial for the reliable use of these sensors. Current approaches for detecting adverse weather points require large amounts of labeled data, which can be difficult and expensive to obtain. This paper proposes a label-efficient approach to segment LiDAR point clouds in adverse weather. We develop a framework that uses few-shot semantic segmentation to learn to segment adverse weather points from only a few labeled examples. Then, we use a semi-supervised learning approach to generate pseudo-labels for unlabelled point clouds, significantly increasing the amount of training data without requiring any additional labeling. We also integrate good weather data in our training pipeline, allowing for high performance in both good and adverse weather conditions. Results on real and synthetic datasets show that our method performs well in detecting snow, fog, and spray. Furthermore, we achieve competitive performance against fully supervised methods while using only a fraction of labeled data.
title Label-Efficient Semantic Segmentation of LiDAR Point Clouds in Adverse Weather Conditions
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.09906