Title of article :
Multiscale High-Level Feature Fusion for Histopathological Image Classification
Author/Authors :
Lai, ZhiFei Department of Computer Science and Engineering - South China University of Technology - Guangzhou, China , Deng, HuiFang Department of Computer Science and Engineering - South China University of Technology - Guangzhou, China
Abstract :
Histopathological image classification is one of the most important steps for disease diagnosis. We proposed a method for multiclass
histopathological image classification based on deep convolutional neural network referred to as coding network. It can gain
better representation for the histopathological image than only using coding network. The main process is that training a deep
convolutional neural network is to extract high-level feature and fuse two convolutional layers’ high-level feature as multiscale highlevel feature. In order to gain better performance and high efficiency, we would employ sparse autoencoder (SAE) and principal
components analysis (PCA) to reduce the dimensionality of multiscale high-level feature. We evaluate the proposed method on a
real histopathological image dataset. Our results suggest that the proposed method is effective and outperforms the coding network.
Keywords :
High-Level , Histopathological , PCA
Journal title :
Computational and Mathematical Methods in Medicine