n In-tunnel Accident Detection System based on the Learning of Accident Sound

All published articles of this journal are available on ScienceDirect.

RESEARCH ARTICLE

In-tunnel Accident Detection System based on the Learning of Accident Sound

The Open Transportation Journal 21 May 2021 RESEARCH ARTICLE DOI: 10.2174/1874447802115010081

Abstract

Introduction:

Traffic accidents are easy to occur in the tunnel due to its special environment, and the consequences are very serious. The existing vehicle accident detection system and CCTV system have the issues of low detection rate.

Methods:

A method of using Mel Frequency Cepstrum Coefficient (MFCC) to extract sound features and using a deep neural network (DNN) to learn sound features is proposed to distinguish accident sound from the non-accident sound.

Results and Discussion:

The experimental results show that the method can effectively classify accident sound and non-accident sound, and the recall rate can reach more than 78% by setting appropriate neural network parameters.

Conclusion:

The method proposed in this research can be used to detect tunnel accidents and consequently, accidents can be detected in time and avoid greater disasters.

Keywords: Accident sound classification, Accident sound detection, Deep neural network, MFCC, Traffic accidents, Tunnel accidents.
Fulltext HTML PDF ePub
1800
1801
1802
1803
1804