Convolutional Correlation Branch Network for Image Classification
Chaorong Li,
Wenjie Luo,
Lihong Zhu
Abstract:ResNets are currently the mainstream networks used in engineering and research. However, cellular neural networks have inherent flaws, including typical problems such as structural defects and loss of convolutional information. In view of this, we propose a multi-branch deep network based on the correlation features of feature maps. Convolution-correlated features are derived from covariance matrices of feature maps within network layers. Because the covariance matrix belongs to a Riemannian manifold, in the n… Show more
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