[期刊论文][Original Article]


Integrating absolute distances in collaborative representation for robust image classification

作   者:
Shaoning Zeng;Xiong Yang;Jianping Gou;Jiajun Wen;

出版年:2016

页     码:189 - 196
出版社:Elsevier BV


摘   要:

Abstract Conventional sparse representation based classification (SRC) represents a test sample with the coefficient solved by each training sample in all classes. As a special version and improvement to SRC, collaborative representation based classification (CRC) obtains representation with the contribution from all training samples and produces more promising results on facial image classification. In the solutions of representation coefficients, {CRC} considers original value of contributions from all samples. However, one prevalent practice in such kind of distance-based methods is to consider only absolute value of the distance rather than both positive and negative values. In this paper, we propose an novel method to improve collaborative representation based classification, which integrates an absolute distance vector into the residuals solved by collaborative representation. And we named it AbsCRC. The key step in AbsCRC method is to use factors a and b as weight to combine {CRC} residuals rescrc with absolute distance vector d i s a b s and generate a new deviation r = a · r e s c r c − b · d i s a b s , which is in turn used to perform classification. Because the two residuals have opposite effect in classification, the method uses a subtraction operation to perform fusion. We conducted extensive experiments to evaluate our method for image classification with different instantiations. The experimental results indicated that it produced a more promising result of classification on both facial and non-facial images than original {CRC} method.



关键字:

Sparse representation; Collaborative representation; Integration; Image classification; Face recognition


所属期刊
CAAI Transactions on Intelligence Technology
ISSN: 2468-2322
来自:Elsevier BV