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Main Authors: Ma, Cong, Qiao, Lei, Zhu, Chengkai, Liu, Kai, Kong, Zelong, Li, Qing, Zhou, Xueqi, Kan, Yuheng, Wu, Wei
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.02640
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author Ma, Cong
Qiao, Lei
Zhu, Chengkai
Liu, Kai
Kong, Zelong
Li, Qing
Zhou, Xueqi
Kan, Yuheng
Wu, Wei
author_facet Ma, Cong
Qiao, Lei
Zhu, Chengkai
Liu, Kai
Kong, Zelong
Li, Qing
Zhou, Xueqi
Kan, Yuheng
Wu, Wei
contents Vehicle-to-everything (V2X) is a popular topic in the field of Autonomous Driving in recent years. Vehicle-infrastructure cooperation (VIC) becomes one of the important research area. Due to the complexity of traffic conditions such as blind spots and occlusion, it greatly limits the perception capabilities of single-view roadside sensing systems. To further enhance the accuracy of roadside perception and provide better information to the vehicle side, in this paper, we constructed holographic intersections with various layouts to build a large-scale multi-sensor holographic vehicle-infrastructure cooperation dataset, called HoloVIC. Our dataset includes 3 different types of sensors (Camera, Lidar, Fisheye) and employs 4 sensor-layouts based on the different intersections. Each intersection is equipped with 6-18 sensors to capture synchronous data. While autonomous vehicles pass through these intersections for collecting VIC data. HoloVIC contains in total on 100k+ synchronous frames from different sensors. Additionally, we annotated 3D bounding boxes based on Camera, Fisheye, and Lidar. We also associate the IDs of the same objects across different devices and consecutive frames in sequence. Based on HoloVIC, we formulated four tasks to facilitate the development of related research. We also provide benchmarks for these tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2403_02640
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle HoloVIC: Large-scale Dataset and Benchmark for Multi-Sensor Holographic Intersection and Vehicle-Infrastructure Cooperative
Ma, Cong
Qiao, Lei
Zhu, Chengkai
Liu, Kai
Kong, Zelong
Li, Qing
Zhou, Xueqi
Kan, Yuheng
Wu, Wei
Computer Vision and Pattern Recognition
Vehicle-to-everything (V2X) is a popular topic in the field of Autonomous Driving in recent years. Vehicle-infrastructure cooperation (VIC) becomes one of the important research area. Due to the complexity of traffic conditions such as blind spots and occlusion, it greatly limits the perception capabilities of single-view roadside sensing systems. To further enhance the accuracy of roadside perception and provide better information to the vehicle side, in this paper, we constructed holographic intersections with various layouts to build a large-scale multi-sensor holographic vehicle-infrastructure cooperation dataset, called HoloVIC. Our dataset includes 3 different types of sensors (Camera, Lidar, Fisheye) and employs 4 sensor-layouts based on the different intersections. Each intersection is equipped with 6-18 sensors to capture synchronous data. While autonomous vehicles pass through these intersections for collecting VIC data. HoloVIC contains in total on 100k+ synchronous frames from different sensors. Additionally, we annotated 3D bounding boxes based on Camera, Fisheye, and Lidar. We also associate the IDs of the same objects across different devices and consecutive frames in sequence. Based on HoloVIC, we formulated four tasks to facilitate the development of related research. We also provide benchmarks for these tasks.
title HoloVIC: Large-scale Dataset and Benchmark for Multi-Sensor Holographic Intersection and Vehicle-Infrastructure Cooperative
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2403.02640