特征提取中的正交稀疏性保持投影

Chao Lan, Xiaoyuan Jing, Qian Liu, Shi-Qiang Gao, Yong-Fang Yao
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引用次数: 4

摘要

稀疏表示在信号处理领域得到了广泛的研究,它令人惊讶地指出,在给定的字典中,一个目标信号可以被精确地表示为很少测量信号(通常称为原子)的线性组合。这一发现很快被应用到模式识别领域,最近,一种新开发的无监督特征提取方法被称为稀疏性保持投影(SPP),其目的是寻找一个线性嵌入空间,在该空间中可以保留字典中数据之间的稀疏重建关系。然而,SPP是非正交的,仍然有一些改进的空间。特别地,考虑到字典的某些整洁性的保留,本文提出了一种正交稀疏性保留投影(OSPP)。SPP迭代计算出一个投影向量,该投影向量既能保持稀疏重构关系,又能保证其与之前得到的所有向量正交。实证研究表明,OSPP比SPP具有更强大的稀疏性保持能力,因此有望具有更好的分类性能,因为稀疏性可能与歧视有关。在耶鲁大学公共人脸数据库上的实验验证了OSPP的有效性,并与几种具有代表性的无监督特征提取方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Orthogonal sparsity preserving projections for feature extraction
Sparse representation has been extensively studied in the signal processing community, which surprisingly pointed out that one target signal can be accurately represented as a linear combination of very few measurement signals, often called atoms, in a given dictionary. This discovery has soon been employed to the field of pattern recognition and more recently, given rise to a newly developed unsupervised feature extraction method named sparsity preserving projections (SPP), which aims at seeking a linear embedded space where the sparse reconstructive relations among the data in the dictionary can be preserved. However, SPP is non-orthogonal and still has some space for improvement. Specially, by taking into consideration the preservation of some neat property of a dictionary, this paper presents an orthogonal sparsity preserving projections (OSPP). OSPP iteratively calculate a projective vector which can preserve the sparse reconstructive relations as SPP dose, and at the same enforcing it to be orthogonal to all previously obtained vectors. Empirical study shows that OSPP has more powerful sparsity preserving ability than SPP and hence is expected to have better classification performance, since sparsity is potentially related to discrimination. Experiments on the public Yale face databases validate the effectiveness of OSPP, as compared with several representative unsupervised feature extraction methods.
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