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Regularized Class-Specific Subspace Classifier

机译:正则化的特定于类的子空间分类器

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摘要

In this paper, we mainly focus on how to achieve the translated subspace representation for each class, which could simultaneously indicate the distribution of the associated class and the differences from its complementary classes. By virtue of the reconstruction problem, the class-specific subspace classifier (CSSC) problem could be represented as a series of biobjective optimization problems, which minimize and maximize the reconstruction errors of the related class and its complementary classes, respectively. Besides, the regularization term is specifically introduced to ensure the whole system’s stability. Accordingly, a regularized class-specific subspace classifier (RCSSC) method can be further proposed based on solving a general quadratic ratio problem. The proposed RCSSC method consistently converges to the global optimal subspace and translation under the variations of the regularization parameter. Furthermore, the proposed RCSSC method could be extended to the unregularized case, which is known as unregularized CSSC (UCSSC) method via orthogonal decomposition technique. As a result, the effectiveness and the superiority of both proposed RCSSC and UCSSC methods can be verified analytically and experimentally.
机译:在本文中,我们主要集中于如何实现每个类的翻译子空间表示,这可以同时指示关联类的分布及其与互补类的区别。通过重构问题,特定于类的子空间分类器(CSSC)问题可以表示为一系列双目标优化问题,它们分别使相关类及其互补类的重构误差最小化和最大化。此外,专门引入了正则化术语以确保整个系统的稳定性。因此,可以在解决一般二次比率问题的基础上,进一步提出正则化的特定类别子空间分类器(RCSSC)方法。提出的RCSSC方法在正则化参数的变化下始终收敛于全局最优子空间和转换。此外,本文提出的RCSSC方法可以扩展到非正规情况,通过正交分解技术将其称为非正规CSSC(UCSSC)方法。结果,可以通过分析和实验来验证所提出的RCSSC和UCSSC方法的有效性和优越性。

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