Abstract

Purpose The purpose of this paper is to accurately capture the risks which are caused by each road user in time. Design/methodology/approach The authors proposed a novel risk assessment approach based on the multi-sensor fusion algorithm in the real traffic environment. Firstly, they proposed a novel detection-level fusion approach for multi-object perception in dense traffic environment based on evidence theory. This approach integrated four states of track life into a generic fusion framework to improve the performance of multi-object perception. The information of object type, position and velocity was accurately obtained. Then, they conducted several experiments in real dense traffic environment on highways and urban roads, which enabled them to propose a novel road traffic risk modeling approach based on the dynamic analysis of vehicles in a variety of driving scenarios. By analyzing the generation process of traffic risks between vehicles and the road environment, the equivalent forces of vehicle–vehicle and vehicle–road were presented and theoretically calculated. The prediction steering angle and trajectory were considered in the determination of traffic risk influence area. Findings The results of multi-object perception in the experiments showed that the proposed fusion approach achieved low false and missing tracking, and the road traffic risk was described as a field of equivalent force. The results extend the understanding of the traffic risk, which supported that the traffic risk from the front and back of the vehicle can be perceived in advance. Originality/value This approach integrated four states of track life into a generic fusion framework to improve the performance of multi-object perception. The information of object type, position and velocity was used to reduce erroneous data association between tracks and detections. Then, the authors conducted several experiments in real dense traffic environment on highways and urban roads, which enabled them to propose a novel road traffic risk modeling approach based on the dynamic analysis of vehicles in a variety of driving scenarios. By analyzing the generation process of traffic risks between vehicles and the road environment, the equivalent forces of vehicle–vehicle and vehicle–road were presented and theoretically calculated.

Highlights

  • In 2015, nearly 190,000 crashes were reported in China, causing more than 58,000 fatalities and 200,000 injuries (TMBPSM, 2016)

  • Unlike the number of misclassifications used in Chavez-Garcia et al.’s (2014) study, Figure 12 Scenario case with the fusion results in red bounding boxes we extend the metrics to adopt ground truth (GT), false positive (FP) and false negative (FN), as well as false positive rate (FPR) and false negative rate (FNR), which are defined as:

  • This study presented the concept of traffic safety field by embedding the equivalent force and established a new traffic risk model

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Summary

Introduction

In 2015, nearly 190,000 crashes were reported in China, causing more than 58,000 fatalities and 200,000 injuries (TMBPSM, 2016). Traffic accidents are a major public-safety problem in developing countries such as China, which cause enormous economic losses and can even destroy families. The current issue and full text archive of this journal is available on Emerald Insight at: www.emeraldinsight.com/2399-9802.htm. © Xunjia Zheng, Bin Huang, Daiheng Ni and Qing Xu. Published in Journal of Intelligent and Connected Vehicles. The full terms of this licence may be seen at http://creativecommons.org/licences/by/4.0/legalcode

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