Abstract

For urban traffic, traffic accidents are the most direct and serious risk to people’s lives, and rapid recognition and warning of traffic accidents is an important remedy to reduce their harmful effects. However, research scholars are often confronted with the problem of scarce and difficult-to-collect accident data resources for traffic accident scenarios. Therefore, in this paper, a traffic data generation model based on Generative Adversarial Networks (GAN) is developed. To make GAN applicable to non-graphical data, we improve the generator network structure of the model and used the generated model to resample the original data to obtain new traffic accident data. By constructing an adversarial neural network model, we generate a large number of data samples that are similar to the original traffic accident data. Results of the statistical test indicate that the generated samples are not significantly different from the original data. Furthermore, the experiments of traffic accident recognition with several representative classifiers demonstrate that the augmented data can effectively enhance the performance of accident recognition, with a maximum increase in accuracy of 3.05% and a maximum decrease in the false positive rate of 2.95%. Experimental results verify that the proposed method can provide reliable mass data support for the recognition of traffic accidents and road traffic safety.

Highlights

  • Published: 27 August 2021The transportation industry is growing rapidly, and road transport has been the most important mode of transportation today

  • A large number of road traffic accidents occur on the road every year, especially those caused by motor vehicles in highways and urban beltways, often leading to massive loss of life and property

  • Due to the characteristics of urban traffic, such as high traffic flow and mixed traffic, once a traffic accident occurs it will seriously affect the efficiency of traffic flow, intensify urban congestion, and serious traffic accidents can even lead to paralysis of urban traffic

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Summary

Introduction

Published: 27 August 2021The transportation industry is growing rapidly, and road transport has been the most important mode of transportation today. A large number of road traffic accidents occur on the road every year, especially those caused by motor vehicles in highways and urban beltways, often leading to massive loss of life and property. Due to the characteristics of urban traffic, such as high traffic flow and mixed traffic, once a traffic accident occurs it will seriously affect the efficiency of traffic flow, intensify urban congestion, and serious traffic accidents can even lead to paralysis of urban traffic. These will have a direct impact on the daily travel and lives of residents. We only focus on vehicle accidents that occurred on highways and beltways where pedestrians or non-motors are forbidden

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