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      Automatic Recognition of Coal and Gangue based on Convolution Neural Network

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          Abstract

          We designed a gangue sorting system,and built a convolutional neural network model based on AlexNet. Data enhancement and transfer learning are used to solve the problem which the convolution neural network has insufficient training data in the training stage. An object detection and region clipping algorithm is proposed to adjust the training image data to the optimum size. Compared with traditional neural network and SVM algorithm, this algorithm has higher recognition rate for coal and coal gangue, and provides important reference for identification and separation of coal and gangue.

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          Identification of Coal and Gangue by Self-Organizing Competitive Neural Network and SVM

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            Using visual texture analysis to classify raw coal components

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              Research on identification of coal and waste rock based on GLCM and BP neural network

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                Author and article information

                Journal
                03 December 2017
                Article
                1712.00720
                20d57117-79ae-4689-9baf-78247eddf377

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                cs.CV

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