Longitudinal tear detection method of conveyor belt based on audio-visual fusion

Journal Article (2021)
Authors

Jian Che (Taiyuan University of Technology)

Tiezhu Qiao (Taiyuan University of Technology)

Yi Yang (Taiyuan University of Technology)

Haitao Zhang (Taiyuan University of Technology)

Y. Pang (TU Delft - Transport Engineering and Logistics)

Research Group
Transport Engineering and Logistics
Copyright
© 2021 Jian Che, Tiezhu Qiao, Yi Yang, Haitao Zhang, Y. Pang
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 Jian Che, Tiezhu Qiao, Yi Yang, Haitao Zhang, Y. Pang
Research Group
Transport Engineering and Logistics
Bibliographical Note
Accepted Author Manuscript@en
Volume number
176
DOI:
https://doi.org/10.1016/j.measurement.2021.109152
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Abstract

Conveyor belt tear detection is a very important part of coal mine safety production. In this paper, a new method of detecting conveyor belt damage named audio-visual fusion (AVF) detection method is proposed. The AVF method uses both a visible light CCD and a microphone array to collect images and sounds of the conveyor belt in different running states. By processing and analyzing the collected images and sounds, the image and sound features of normal, tear and scratch can be extracted respectively. Then the extracted features of images and sounds are fused and classified by machine learning algorithm. The results show that the accuracy of AVF method for conveyor belt scratch is 93.66%, and the accuracy of longitudinal tear is higher than 96.23%. Compared with existing methods AVF method overcomes the limitation of visual detection condition, and is more accurate and reliable for conveyor belt tear detection.

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