基于正则化松弛非负矩阵分解的人再识别

Weiya Ren, Guohui Li
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引用次数: 1

摘要

我们用高效的数据表示方法解决了人的再识别问题。基于对数据矩阵和基矩阵没有符号约束的松弛非负矩阵分解(rNMF),我们考虑了局部流形假设和秩约束两种正则化来改进松弛非负矩阵分解。局部流形假设有助于保持数据的几何结构,秩约束有助于提高数据表示的判别性和稀疏性。当只考虑流形正则化时,我们提出了松弛图正则化NMF (rGNMF)。当考虑这两种正则化时,我们提出了带正则化的放松NMF (rRNMF)。为了证明我们提出的方法,我们在两个不同的公开可用数据集上运行实验,显示了最先进甚至更好的结果,然而,在更低的计算工作量上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Person Re-identification Based on Relaxed Nonnegative Matrix Factorization with Regularizations
We address the person reidentification problem by efficient data representation method. Based on the Relaxed Nonnegative matrix factorization (rNMF) which has no sign constraints on the data matrix and the basis matrix, we consider two regularizations to improve the Relaxed NMF, which are the local manifold assumption and a rank constraint. The local manifold assumption helps preserve the geometry structure of the data and the rank constraint helps improve the discrimination and the sparsity of the data representations. When only the manifold regularization is considered, we propose the Relaxed Graph regularized NMF (rGNMF). When both two regularizations are considered, we propose the Relaxed NMF with regularizations (rRNMF). To demonstrate our proposed methods, we run experiments on two different publicly available datasets, showing state-of-the-art or even better results, however, on much lower computational efforts.
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