作者
Zhe Chen, Xiao-Jun Wu, Yu-Hong Cai, Josef Kittler
发表日期
2021/6/1
期刊
Signal Processing
卷号
183
页码范围
107988
出版商
Elsevier
简介
Recently many variations of least squares regression (LSR) have been developed to address the problem of over-fitting that widely exists in the task of image classification. Among these methods, the most prevalent two means, such as label relaxation and graph manifold embedding, have been demonstrated to be highly effective. In this paper, we present a new strategy named sparse non-negative transition subspace learning (SN-TSL) based least squares regression algorithm which aims to avoid over-fitting by learning a transition subspace between the multifarious high-dimensional inputs and low-dimensional binary labels. Moreover, considering the final regression targets are sparse binary positive matrices, we use the l 1-norm and the non-negativity constraint to enforce the transition subspace to be sparse and non-negative. The resulting subspace features can be viewed as intermediate representations …
引用总数
20212022202320242472
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