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  4. V2V4Real: A Real-World Large-Scale Dataset for Vehicle-to-Vehicle Cooperative Perception
 
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2023
Conference Paper
Title

V2V4Real: A Real-World Large-Scale Dataset for Vehicle-to-Vehicle Cooperative Perception

Abstract
Modern perception systems of autonomous vehicles are known to be sensitive to occlusions and lack the capability of long perceiving range. It has been one of the key bottlenecks that prevents Level 5 autonomy. Recent research has demonstrated that the Vehicle-to-Vehicle (V2V) cooperative perception system has great potential to revolutionize the autonomous driving industry. However, the lack of a real-world dataset hinders the progress of this field. To facilitate the development of cooperative perception, we present V2V4Real, the first large-scale real-world multi-modal dataset for V2V perception. The data is collected by two vehicles equipped with multi-modal sensors driving together through diverse scenarios. Our V2V4Real dataset covers a driving area of 410 km, comprising 20K LiDAR frames, 40K RGB frames, 240K annotated 3D bounding boxes for 5 classes, and HDMaps that cover all the driving routes. V2V4Real introduces three perception tasks, including cooperative 3D object detection, cooperative 3D object tracking, and Sim2Real domain adaptation for cooperative perception. We provide comprehensive benchmarks of recent cooperative perception algorithms on three tasks. The V2V4Real dataset can be found at research.seas.ucla.edu/mobility-lab/v2v4real/.
Author(s)
Xu, Runsheng
University of California, Los Angeles
Xia, Xin
University of California, Los Angeles
Li, Jinlong
Cleveland State University
Li, Hanzhao
University of California, Los Angeles
Zhang, Shuo
University of California, Los Angeles
Tu, Zhengzhong
The University of Texas at Austin
Meng, Zonglin
University of California, Los Angeles
Xiang, Hao
University of California, Los Angeles
Dong, Xiaoyu
Northwestern University
Song, Rui
Fraunhofer-Institut für Verkehrs- und Infrastruktursysteme IVI  
Yu, Hongkai
Cleveland State University
Zhou, Bolei
University of California, Los Angeles
Ma, Jiaqi
University of California, Los Angeles
Mainwork
IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2023. Proceedings  
Conference
Conference on Computer Vision and Pattern Recognition 2023  
DOI
10.1109/CVPR52729.2023.01318
Language
English
Fraunhofer-Institut für Verkehrs- und Infrastruktursysteme IVI  
Keyword(s)
  • Autonomous driving

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