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Main Authors: Piroli, Aldi, Dallabetta, Vinzenz, Kopp, Johannes, Walessa, Marc, Meissner, Daniel, Dietmayer, Klaus
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.09945
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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 Autonomous vehicles rely on camera, LiDAR, and radar sensors to navigate the environment. Adverse weather conditions like snow, rain, and fog are known to be problematic for both camera and LiDAR-based perception systems. Currently, it is difficult to evaluate the performance of these methods due to the lack of publicly available datasets containing multimodal labeled data. To address this limitation, we propose the SemanticSpray++ dataset, which provides labels for camera, LiDAR, and radar data of highway-like scenarios in wet surface conditions. In particular, we provide 2D bounding boxes for the camera image, 3D bounding boxes for the LiDAR point cloud, and semantic labels for the radar targets. By labeling all three sensor modalities, the SemanticSpray++ dataset offers a comprehensive test bed for analyzing the performance of different perception methods when vehicles travel on wet surface conditions. Together with comprehensive label statistics, we also evaluate multiple baseline methods across different tasks and analyze their performances. The dataset will be available at https://semantic-spray-dataset.github.io .
format Preprint
id arxiv_https___arxiv_org_abs_2406_09945
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SemanticSpray++: A Multimodal Dataset for Autonomous Driving in Wet Surface Conditions
Piroli, Aldi
Dallabetta, Vinzenz
Kopp, Johannes
Walessa, Marc
Meissner, Daniel
Dietmayer, Klaus
Computer Vision and Pattern Recognition
Autonomous vehicles rely on camera, LiDAR, and radar sensors to navigate the environment. Adverse weather conditions like snow, rain, and fog are known to be problematic for both camera and LiDAR-based perception systems. Currently, it is difficult to evaluate the performance of these methods due to the lack of publicly available datasets containing multimodal labeled data. To address this limitation, we propose the SemanticSpray++ dataset, which provides labels for camera, LiDAR, and radar data of highway-like scenarios in wet surface conditions. In particular, we provide 2D bounding boxes for the camera image, 3D bounding boxes for the LiDAR point cloud, and semantic labels for the radar targets. By labeling all three sensor modalities, the SemanticSpray++ dataset offers a comprehensive test bed for analyzing the performance of different perception methods when vehicles travel on wet surface conditions. Together with comprehensive label statistics, we also evaluate multiple baseline methods across different tasks and analyze their performances. The dataset will be available at https://semantic-spray-dataset.github.io .
title SemanticSpray++: A Multimodal Dataset for Autonomous Driving in Wet Surface Conditions
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.09945