Multispectral visual detection method for conveyor belt longitudinal tear
Chengcheng Hou (Taiyuan University of Technology)
Tiezhu Qiao (Taiyuan University of Technology)
Haitao Zhang (Taiyuan University of Technology)
Y Pang (TU Delft - Transport Engineering and Logistics)
Xiaoyan Xiong (Taiyuan University of Technology)
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Abstract
As an important part of modern coal mine production, conveyor belts are widely used in the coal collection and transportation. In order to ensure the safe operation of the coal mine conveyor belt and solve the drawbacks of the existing conveyor belt longitudinal tear detection technology, a multispectral visual detection method for conveyor belt longitudinal tear is proposed in this paper. The experimental results show that the multispectral visual detection method not only can identify the conveyor belt longitudinal tear, but also accurately classifies and identify other states of the conveyor belt. The accuracy of multispectral visual detection method is over 90.06%, and the precision of longitudinal tearing recognition is over 92.04%. The proposed method is verified to meet the requirements of reliability and real-time in the industrial field.