FPCANet: Fisher discrimination for Principal Component Analysis Network

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摘要

With the development of Deep Learning (DL) in recent years, integrating traditional machine learning methods with DL has received a lot of attention. One of such representative work is the Principal Component Analysis Network (PCANet), which adopts Principal Component Analysis (PCA) to learn convolutional kernels (or filters) for image classification. Nevertheless, PCANet does not use the discriminative information during learning filters. In this paper, based on PCA in the PCANet, we propose a new model called Fisher PCA (FPCA) which combines Fisher Linear Discriminant Analysis (LDA) with PCA. To facilitate the practical calculation, a approximate model of FPCA is given by introducing a intermediate variable. Theoretically, we analyze the relationship between the original FPCA model and its approximate model, and give a convergence analysis of the approximate model. Additionally, stacking the approximate model of FPCA, we also construct a deep network named FPCA Network (FPCANet). Extensive experiments are conducted to compare FPCANet with other state-of-the-art models for classification problems. The results show that the proposed FPCANet can learn features with more discriminative information, and thus demonstrating its competitive performances on classification tasks.

论文关键词:Deep learning,Principal component analysis,Discriminative information,Fisher Principal Component Analysis Network (FPCANet)

论文评审过程:Received 10 June 2018, Revised 9 December 2018, Accepted 12 December 2018, Available online 23 December 2018, Version of Record 23 January 2019.

论文官网地址:https://doi.org/10.1016/j.knosys.2018.12.015