PandaSet: Advanced Sensor Suite Dataset for Autonomous Driving

The accelerating development of autonomous driving technology has placed greater demands on obtaining large amounts of high-quality data. Representative, labeled, real world data serves as the fuel for training deep learning networks, critical for improving self-driving perception algorithms. In thi...

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Bibliographic Details
Published in:2021 IEEE International Intelligent Transportation Systems Conference (ITSC) pp. 3095 - 3101
Main Authors: Xiao, Pengchuan, Shao, Zhenlei, Hao, Steven, Zhang, Zishuo, Chai, Xiaolin, Jiao, Judy, Li, Zesong, Wu, Jian, Sun, Kai, Jiang, Kun, Wang, Yunlong, Yang, Diange
Format: Conference Proceeding
Language:English
Published: IEEE 19.09.2021
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Summary:The accelerating development of autonomous driving technology has placed greater demands on obtaining large amounts of high-quality data. Representative, labeled, real world data serves as the fuel for training deep learning networks, critical for improving self-driving perception algorithms. In this paper, we introduce PandaSet, the first dataset produced by a complete, high-precision autonomous vehicle sensor kit with a no-cost commercial license. The dataset was collected using one 360° mechanical spinning LiDAR, one forward-facing, long-range LiDAR, and 6 cameras. The dataset contains more than 100 scenes, each of which is 8 seconds long, and provides 28 types of labels for object classification and 37 types of labels for semantic segmentation. We provide baselines for LiDAR-only 3D object detection, LiDAR-camera fusion 3D object detection and LiDAR point cloud segmentation. For more details about PandaSet and the development kit, see https://scale.com/open-datasets/pandaset.
DOI:10.1109/ITSC48978.2021.9565009