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Feature Extraction Based on Maximum Nearest Subspace Margin Criterion

机译:基于最大最近子空间裕度准则的特征提取

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摘要

Based on the classification rule of sparse representation-based classification (SRC) and linear regression classification (LRC), we propose the maximum nearest subspace margin criterion for feature extraction. The proposed method can be seen as a preprocessing step of SRC and LRC. By maximizing the inter-class reconstruction error and minimizing the intra-class reconstruction error simultaneously, the proposed method significantly improves the performances of SRC and LRC. Compared with linear discriminant analysis, the proposed method avoids the small sample size problem and can extract more features. Moreover, we extend LRC to overcome the potential singular problem. The experimental results on the extended Yale B (YALE-B), AR, PolyU finger knuckle print and the CENPARMI handwritten numeral databases demonstrate the effectiveness of the proposed method.
机译:基于基于稀疏表示的分类和线性回归分类的分类规则,提出了最大最近子空间边缘准则用于特征提取。所提出的方法可以看作是SRC和LRC的预处理步骤。通过最大化类间重构误差并同时最小化类内重构误差,该方法显着提高了SRC和LRC的性能。与线性判别分析相比,该方法避免了样本量小的问题,可以提取更多特征。此外,我们扩展了LRC以克服潜在的奇异问题。在扩展的Yale B(YALE-B),AR,PolyU指关节指纹和CENPARMI手写数字数据库上的实验结果证明了该方法的有效性。

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