用于特征提取和分类的全局稀疏表示投影

Zhihui Lai, Zhong Jin, Jian Yang
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引用次数: 15

摘要

在本文中,我们提出了一种新的监督学习方法,称为全局稀疏表示投影(GSRP),用于线性降维。GSRP可以看作是稀疏表示和流形学习的结合。但与当前的流形学习方法如局部保持投影(LPP)不同,GSRP在目标函数中引入了全局稀疏表示信息。由于稀疏表示可以通过施加稀疏性先验来隐式地使用数据的“局部”结构,因此我们利用这一特性来表征局部结构。GSRP通过结合局部类间邻域关系和稀疏表示信息,在保持数据稀疏重构关系的同时,最大限度地提高类间可分离性。综合比较和大量实验表明,GSRP比LPP和稀疏性保留投影(SPP)等最新技术具有更高的识别率。
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Global Sparse Representation Projections for Feature Extraction and Classification
In this paper, we propose a novel supervised learning method called Global Sparse Representation Projections (GSRP) for linear dimensionality reduction. GSRP can be viewed as a combiner of sparse representation and manifold learning. But differing from the recent manifold learning methods such as Local Preserving Projections (LPP), GSRP introduces the global sparse representation information into the objective function. Since sparse representation can implicitly employ the "local" structure of the data by imposing the sparsity prior, we take advantages of this property to characterize the local structure. By combining the local interclass neighborhood relationship and sparse representation information, GSRP aims to preserve the sparse reconstructive relationship of the data and simultaneously maximize the interclass separability. Comprehensive comparison and extensive experiments show that GSRP achieves higher recognition rates than the state-of-the-art techniques such as LPP and Sparsity Preserving Projections (SPP).
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