Discriminative Block-Diagonal Representation Learning for Image Recognition
Zheng Zhang, Yong Xu, Ling Shao, Jian Yang

TL;DR
This paper introduces a discriminative block-diagonal low-rank representation method that jointly learns training and test data representations, improving recognition accuracy across various image datasets.
Contribution
It proposes a novel joint optimization framework for block-diagonal representation learning that enhances intra-class coherence and inter-class incoherence for image recognition.
Findings
Achieves superior recognition accuracy on multiple datasets.
Outperforms existing state-of-the-art methods.
Effectively learns representations for both training and test data.
Abstract
Existing block-diagonal representation researches mainly focuses on casting block-diagonal regularization on training data, while only little attention is dedicated to concurrently learning both block-diagonal representations of training and test data. In this paper, we propose a discriminative block-diagonal low-rank representation (BDLRR) method for recognition. In particular, the elaborate BDLRR is formulated as a joint optimization problem of shrinking the unfavorable representation from off-block-diagonal elements and strengthening the compact block-diagonal representation under the semi-supervised framework of low-rank representation. To this end, we first impose penalty constraints on the negative representation to eliminate the correlation between different classes such that the incoherence criterion of the extra-class representation is boosted. Moreover, a constructed subspace…
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