IEEE Access (Jan 2020)

Image Target Recognition Model of Multi- Channel Structure Convolutional Neural Network Training Automatic Encoder

  • Sen Zhang,
  • Qiuyun Cheng,
  • Dengxi Chen,
  • Haijun Zhang

DOI
https://doi.org/10.1109/ACCESS.2020.3003059
Journal volume & issue
Vol. 8
pp. 113090 – 113103

Abstract

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The self-encoder is a typical unsupervised deep learning algorithm. In the field of unsupervised learning, it is very popular with researchers. Therefore, in view of the shortage of labeled training samples, the convolution kernel of a typical convolutional neural network is set by experience, and the network structure is fixed and it is difficult to re-learn later. This paper combines the convolutional neural network and the automatic encoder, and proposes a multi-based the method of integrated network structure to extract the features of the image for recognition. First, the SAE pre-trained CNN model convolution kernel is used to pre-train based on the classic CNN structure. Secondly, input and process image data of different scales to extract image space and spectral features respectively. Then, construct multiple channels, and use different scale filters and sampling intervals for different channels. Finally, after one layer of down sampling, the feature maps obtained from multiple channels are input into the fully connected layer, and after a hidden layer, the features finally used for classification are obtained. Experimental results show that the proposed method uses sparse automatic coding for pre-training time efficiency increased by 50%, and can further improve the recognition accuracy, the highest recognition rate reached 0.985.

Keywords