模式识别(心理学)
判别式
子空间拓扑
稀疏逼近
人工智能
代表(政治)
面部识别系统
计算机科学
线性判别分析
面子(社会学概念)
非线性降维
拉普拉斯算子
数学
降维
政治
数学分析
社会学
社会科学
法学
政治学
作者
Yingchun Ren,Yufei Chen,Xiaodong Yue
标识
DOI:10.4149/cai_2017_4_815
摘要
Recently feature extraction methods have commonly been used as a principled approach to understand the intrinsic structure hidden in high-dimensional data. In this paper, a novel supervised learning method, called Supervised Sparsity Preserving Projections (SSPP), is proposed. SSPP attempts to preserve the sparse representation structure of the data when identifying an efficient discriminant subspace. First, SSPP creates a concatenated dictionary by class-wise PCA decompositions and learns the sparse representation structure of each sample under the constructed dictionary using the least squares method. Second, by maximizing the ratio of non-local scatter to local scatter, a Laplacian discriminant function is defined to characterize the separability of the samples in the different sub-manifolds. Then, to achieve improved recognition results, SSPP integrates the learned sparse representation structure as a regular term into the Laplacian discriminant function. Finally, the proposed method is converted into a generalized eigenvalue problem. The extensive and promising experimental results on several popular face databases validate the feasibility and effectiveness of the proposed approach.
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