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基于完整局部二值模式和卷积神经网络的煤岩识别多尺度特征融合

Multi-Scale Feature Fusion for Coal-Rock Recognition Based on Completed Local Binary Pattern and Convolution Neural Network.

作者信息

Liu Xiaoyang, Jing Wei, Zhou Mingxuan, Li Yuxing

机构信息

School of Mechanical Electronic & Information Engineering, China University of Mining & Technology, Beijing 100083, China.

College of Geoscience & Surveying Engineering, China University of Mining & Technology, Beijing 100083, China.

出版信息

Entropy (Basel). 2019 Jun 25;21(6):622. doi: 10.3390/e21060622.

Abstract

Automatic coal-rock recognition is one of the critical technologies for intelligent coal mining and processing. Most existing coal-rock recognition methods have some defects, such as unsatisfactory performance and low robustness. To solve these problems, and taking distinctive visual features of coal and rock into consideration, the multi-scale feature fusion coal-rock recognition (MFFCRR) model based on a multi-scale Completed Local Binary Pattern (CLBP) and a Convolution Neural Network (CNN) is proposed in this paper. Firstly, the multi-scale CLBP features are extracted from coal-rock image samples in the Texture Feature Extraction (TFE) sub-model, which represents texture information of the coal-rock image. Secondly, the high-level deep features are extracted from coal-rock image samples in the Deep Feature Extraction (DFE) sub-model, which represents macroscopic information of the coal-rock image. The texture information and macroscopic information are acquired based on information theory. Thirdly, the multi-scale feature vector is generated by fusing the multi-scale CLBP feature vector and deep feature vector. Finally, multi-scale feature vectors are input to the nearest neighbor classifier with the chi-square distance to realize coal-rock recognition. Experimental results show the coal-rock image recognition accuracy of the proposed MFFCRR model reaches 97.9167%, which increased by 2%-3% compared with state-of-the-art coal-rock recognition methods.

摘要

煤岩自动识别是智能煤炭开采与加工的关键技术之一。现有的大多数煤岩识别方法都存在一些缺陷,如性能不理想、鲁棒性低等。为了解决这些问题,并考虑煤岩独特的视觉特征,本文提出了一种基于多尺度完备局部二值模式(CLBP)和卷积神经网络(CNN)的多尺度特征融合煤岩识别(MFFCRR)模型。首先,在纹理特征提取(TFE)子模型中从煤岩图像样本中提取多尺度CLBP特征,其代表煤岩图像的纹理信息。其次,在深度特征提取(DFE)子模型中从煤岩图像样本中提取高层深度特征,其代表煤岩图像的宏观信息。基于信息论获取纹理信息和宏观信息。第三,通过融合多尺度CLBP特征向量和深度特征向量生成多尺度特征向量。最后,将多尺度特征向量输入到采用卡方距离的最近邻分类器中实现煤岩识别。实验结果表明,所提出的MFFCRR模型的煤岩图像识别准确率达到97.9167%,与现有最先进的煤岩识别方法相比提高了2%-3%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3903/7515116/e3dffffe86d4/entropy-21-00622-g001.jpg

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