PCANet: An energy perspective

03/03/2016
by   Jiasong Wu, et al.
0

The principal component analysis network (PCANet), which is one of the recently proposed deep learning architectures, achieves the state-of-the-art classification accuracy in various databases. However, the explanation of the PCANet is lacked. In this paper, we try to explain why PCANet works well from energy perspective point of view based on a set of experiments. The impact of various parameters on the error rate of PCANet is analyzed in depth. It was found that this error rate is correlated with the logarithm of energy of image. The proposed energy explanation approach can be used as a testing method for checking if every step of the constructed networks is necessary.

READ FULL TEXT

page 20

page 21

page 24

page 25

page 26

page 27

page 31

page 35

research
03/05/2015

Color Image Classification via Quaternion Principal Component Analysis Network

The Principal Component Analysis Network (PCANet), which is one of the r...
research
11/05/2014

Multilinear Principal Component Analysis Network for Tensor Object Classification

The recently proposed principal component analysis network (PCANet) has ...
research
01/27/2021

TorchPRISM: Principal Image Sections Mapping, a novel method for Convolutional Neural Network features visualization

In this paper we introduce a tool called Principal Image Sections Mappin...
research
06/08/2018

Whether Moving or Not: Modeling and Predicting Error Rates in Pointing Regardless of Target Motion

Understanding the mechanism by which a user's error rate changes in poin...
research
01/04/2021

Generalized RNN beamformer for target speech separation

Recently we proposed an all-deep-learning minimum variance distortionles...
research
12/05/2016

Deep Pyramidal Residual Networks with Separated Stochastic Depth

On general object recognition, Deep Convolutional Neural Networks (DCNNs...

Please sign up or login with your details

Forgot password? Click here to reset