Discriminative Feature Learning via Sparse Autoencoders with Label Consistency Constraints

作者:Cong Hu, Xiao-Jun Wu, Zhen-Qiu Shu

摘要

Autoencoders have been successfully used to build deep hierarchical models of data. However, a deep architecture usually needs further supervised fine-tuning to obtain better discriminative capacity. To improve the discriminative capacity of deep hierarchical features, this paper proposes a new deterministic autoencoder, trained by a label consistency constraints algorithm that injects discriminative information to the network. We introduce the center loss as label consistency constraints to learn the hidden features of data and add it to the Sparse AutoEncoder to form a new autoencoder, namely Label Consistency Constrained Sparse AutoEncoders (LCCSAE). Specifically, the center loss learns the center of each class, and simultaneously penalizes the distances between the features and their corresponding class centers. In the end, autoencoders are stacked to form a deep architecture of LCCSAE for image classification tasks. To validate the effectiveness of LCCSAE, we compare it with other autoencoders in terms of the deeply learned features and the subsequent classification tasks on MNIST and CIFAR-bw datasets. Experimental results demonstrate the superiority of LCCSAE over other methods.

论文关键词:Discriminative feature learning, Label consistency constraints, Deep neural networks, Autoencoder

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论文官网地址:https://doi.org/10.1007/s11063-018-9898-1