Multi-sensor fusion algorithm in cooperative vehicle-infrastructure system for blind spot warning

Author:

Xiang Chao12ORCID,Zhang Li1,Xie Xiaopo1,Zhao Longgang1,Ke Xin1,Niu Zhendong2,Wang Feng1

Affiliation:

1. China Telecom Corporation Limited, Beijing Research Institute, Beijing, China

2. School of Computer Science and Technology, Beijing Institute of Technology, Beijing, China

Abstract

With the rapid development of electric vehicles and artificial intelligence technology, the automatic driving industry has entered a rapid development stage. However, there is a risk of traffic accidents due to the blind spot of vision, whether autonomous vehicles or traditional vehicles. In this article, a multi-sensor fusion perception method is proposed, in which the semantic information from the camera and the range information from the LiDAR are fused at the data layer and the LiDAR point cloud containing semantic information is clustered to obtain the type and location information of the objects. Based on the sensor equipments deployed on the roadside, the sensing information processed by the fusion method is sent to the nearby vehicles in real-time through 5G and V2X technology for blind spot early warning, and its feasibility is verified by experiments and simulations. The blind spot warning scheme based on roadside multi-sensor fusion perception proposed in this article has been experimentally verified in the closed park, which can obviously reduce the traffic accidents caused by the blind spot of vision, and is of great significance to improve traffic safety.

Publisher

SAGE Publications

Subject

Computer Networks and Communications,General Engineering

Reference25 articles.

1. Deloitte. Autonomous driving under the new infrastructure: the battle between single vehicle intelligence and vehicle-road collaboration. 2021, https://mdpi-res.com/d_attachment/sensors/sensors-21-03783/article_deploy/sensors-21-03783-v2.pdf?version=1622424133

2. Vehicle-to-vehicle (V2V) and vehicle-to-infrastructure (V2I) communication in a heterogeneous wireless network – Performance evaluation

3. Autonomous Cars: Technical Challenges and a Solution to Blind Spot

4. An Overview of 3GPP Cellular Vehicle-to-Everything Standards

5. Zou Z, Shi Z, Guo Y, et al. Object detection in 20 years: a survey. Arxiv Preprint Arxiv:1905.05055, 2019, https://arxiv.org/abs/1905.05055

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