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  • ISSN 1005-2518 
  • Founded in 1988
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Mining Technology and Mine Management

Detection of Ore Conveyer Roller Based on Infrared Image

  • Shunling RUAN ,
  • Yankang RUAN ,
  • Caiwu LU ,
  • Qinghua GU
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  • 1.School of Resource Engineering, Xi’an University of Architecture and Technology, Xi’an 710055, Shaanxi, China
    2.Xi’an Key Laboratory of Intelligent Industry Perception Computing and Decision Making, Xi’an 710055, Shaanxi, China

Received date: 2022-08-05

  Revised date: 2022-11-20

  Online published: 2023-03-27

Abstract

With the development of intelligent construction of mine,the detection of mine equipment is becoming more and more intelligent.The ore conveyor belt is one of the important production equipment in the mine,and the abnormal detection of the conveyor roller is one of the important contents of mine safety.At present,most of the ore conveyor roller inspection is manual inspection,and depends on the personal experience of the inspector to judge the working status of the roller,which will lead to problems such as the damage of the roller is not found in time.Therefore,it is urgent to study a more objective,intelligent and efficient method for abnormal detection of rollers.In order to solve the problems of low efficiency and poor real-time performance of the traditional ore conveyor roller anomaly detection method,an optimization model of ore conveyor roller anomaly detection based on infrared image recognition was proposed.The infrared image of the roller was collected on the spot and the infrared image data set of the roller was expanded by using label smoothing and Mosaic data enhancement processing to prevent the overfitting of the detection model and reduce the training cost of the model.In the feature extraction module,it was proposed to use GhostNet backbone feature extraction network,which can effectively reduce the image redundancy produced by feature extraction,accelerate the learning speed of the model,and further optimize the backbone feature extraction network through LeakyReLU activation function to improve the learning ability of the model.In the feature fusion module,multi-dimensional feature fusion was realized through the feature pyramid structure and the bottom-up feature fusion layer,and the SPP-Net module was used to optimize the PaNet feature fusion network to increase the effective receptive field of the model.And through the depth separable convolution block to simplify the model structure,reduce the amount of calculation and the number of parameters of the model.The experimental results show that,compared with the mainstream detection model,the detection model can more effectively identify rollers and distinguish between normal and abnormal rollers.In the actual detection,the detection accuracy of the idlers is 96.2%,the recall rate is 95.9%,and the average detection accuracy is 94.9%,in which the accuracy of abnormal rollers is 99.6%,the accuracy of normal rollers is 90.2%,the detection speed is 39.2 FPS,and the number of model parameters is only 1.1×107.The method provides a guarantee for accurate and efficient inspection of mine conveyor rollers.

Cite this article

Shunling RUAN , Yankang RUAN , Caiwu LU , Qinghua GU . Detection of Ore Conveyer Roller Based on Infrared Image[J]. Gold Science and Technology, 2023 , 31(1) : 123 -132 . DOI: 10.11872/j.issn.1005-2518.2023.01.099

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