4.6 Article

Recognition Methods for Coal and Coal Gangue Based on Deep Learning

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 77599-77610

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3081442

Keywords

Coal; Sorting; Licenses; Feature extraction; Convolution; Random access memory; Kernel; Recognition; coal and coal gangue; deep learning; machine vision; YOLOv4

Funding

  1. Research Fund of Guangdong Key Laboratory of Precision Equipment and Manufacturing Technique [201904]

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The paper introduces an improved YOLOv4 algorithm for intelligent and highly accurate recognition of coal and coal gangue, which outperforms other algorithms in terms of detection accuracy, speed, and performance by optimizing anchor values, anti-interference ability, and increasing the number of layers in the feature pyramid.
Recognizing coal and coal gangue is an important part of the coal industry and is mainly conducted via human sorting at present. Consequently, considerable manpower is needed, which adds a burden to enterprises and results in low efficiency. As an important branch of artificial intelligence, deep learning has been widely applied in many fields, especially in machine vision and voice recognition, its performance is greatly improved compared with the performances of traditional learning methods, and it also has good a transfer learning ability. This paper proposed an improved YOLOv4 algorithm as a classic deep learning method for the intelligent and highly accurate recognition of coal and coal gangue. Compared to other algorithms, YOLOv4 has a better anchor value by applying cluster analysis to different data sets, a good anti-interference ability due to using the Laplacian operator and Gaussian filter to reduce the impacts from mine dust and shock and acquires richer detailed information by increasing the number of layers of the feature pyramid. The experimental results show that compared with the other four algorithms of YOLOv4, YOLOv3, SSD and Faster-RCNN, the improved YOLOv4 proposed in this paper exhibits better detection accuracy, a better detection speed and robust performance.

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