VIPS: Real-Time Perception Fusion for Infrastructure-Assisted Autonomous Driving

Author:

Shi Shuyao1,Cui Jiahe2,Jiang Zhehao1,Yan Zhenyu1,Xing Guoliang1,Jianwei Niu2,Zhenchao Ouyang3

Affiliation:

1. Chinese University of Hong Kong

2. Beihang University, Beijing, China

3. Beihang Hangzhou Innovation Institute Yuhang, Hangzhou, China

Abstract

Infrastructure-assisted autonomous driving is an emerging paradigm that expects to significantly improve the driving safety of autonomous vehicles. The key enabling technology for this vision is to fuse LiDAR results from the roadside infrastructure and the vehicle to improve the vehicle's perception in real time. In this work, we propose VIPS, a novel lightweight system that can achieve decimeter-level and real-time (up to 100ms) perception fusion between driving vehicles and roadside infrastructure. The key idea of VIPS is to exploit highly efficient matching of graph structures that encode objects' lean representations as well as their relationships, such as locations, semantics, sizes, and spatial distribution. Moreover, by leveraging the tracked motion trajectories, VIPS can maintain the spatial and temporal consistency of the scene, which effectively mitigates the impact of asynchronous data frames and unpredictable communication/ compute delays.

Publisher

Association for Computing Machinery (ACM)

Subject

Cell Biology,Developmental Biology,Embryology,Anatomy

Reference10 articles.

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1. Edge-Assisted Relevance-Aware Perception Dissemination in Vehicular Networks;2024 IEEE 44th International Conference on Distributed Computing Systems (ICDCS);2024-07-23

2. Cooperative Infrastructure Perception;2024 IEEE/ACM Ninth International Conference on Internet-of-Things Design and Implementation (IoTDI);2024-05-13

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