[期刊论文]


Robust collaborative representation-based classification via regularization of truncated total least squares

作   者:
Shaoning Zeng;Bob Zhang;Yuandong Lan;Jianping Gou;

出版年:2019

页     码:5689 - 5697
出版社:Springer Nature


摘   要:

Collaborative representation-based classification has shown promising results on cognitive vision tasks like face recognition. It solves a linear problem with (l_1) or (l_2) norm regularization to obtain a stable sparse representation. Previous studies showed that the collaboration representation assisted the output of optimum sparsity constraint, but the choice of regularization also played a crucial role in stable representation. In this paper, we proposed a novel discriminative collaborative representation-based classification method via regularization implemented by truncated total least squares algorithm. The key idea of the proposed method is combining two coefficients obtained by (l_2) regularization and truncated TLS-based regularization. After evaluated by extensive experiments conducted on several benchmark facial databases, the proposed method is demonstrated to outperform the naive collaborative representation-based method, as well as some other state-of-the-art methods for face recognition. The regularization by truncation effectively and dramatically enhances sparsity constraint on coding coefficients in collaborative representation and increases robustness for face recognition.



关键字:

Collaborative representation ; Truncated total least squares ; Face recognition ; Regularization


所属期刊
Neural Computing and Applications
ISSN: 0941-0643
来自:Springer Nature