Online discriminant projective non-negative matrix factorization

Xiang Zhang, Qing Liao, Zhigang Luo
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引用次数: 1

Abstract

Projective non-negative matrix factorization (PNMF) learns a subspace spanned by several non-negative bases by minimizing the distance between samples and their reconstructions in the subspace. Due to its effective representation ability, PNMF has attracted a lot of attention in the computer vision community. However, PNMF suffers from the following limitations: 1) it requires entire dataset to reside in computer's memory, and as a consequence it cannot handle large-scale or streaming data, and 2) it completely ignores discriminative information of available labeled data, and thus has poor performance in classification tasks. Here, we propose an online discriminant PNMF (ODPNMF) method to overcome these deficiencies. Specifically, ODPNMF receives one or a few samples per step and updates the basis via a multiplicative update rule (MUR), which guarantees the non-negativity constraint over basis. To best utilize discriminative information, ODPNMF maintains and adaptively updates both within-class and between-class scatter matrices, during each round of updating the basis. Experimental results on three popular face image datasets verify the effectiveness of ODPNMF compared to representative algorithms.
判别投影非负矩阵在线分解
射影非负矩阵分解(PNMF)通过最小化样本及其在子空间中的重构之间的距离来学习由多个非负基张成的子空间。由于其有效的表示能力,PNMF在计算机视觉界引起了广泛的关注。然而,PNMF存在以下局限性:1)它需要整个数据集驻留在计算机内存中,因此无法处理大规模或流数据;2)它完全忽略了可用标记数据的判别信息,因此在分类任务中性能较差。本文提出了一种在线判别PNMF (ODPNMF)方法来克服这些缺陷。具体来说,ODPNMF每一步接收一个或几个样本,并通过乘法更新规则(MUR)更新基,这保证了对基的非负性约束。为了最好地利用判别信息,ODPNMF在每一轮更新基的过程中维护并自适应地更新类内和类间的散点矩阵。在三个流行的人脸图像数据集上的实验结果验证了ODPNMF算法与代表性算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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