Discriminant Component Analysis and Self-Organized Manifold Mapping for Exploring and Understanding Image Face Spaces

G. Giraldi, Edson C. Kitani, E. Del-Moral-Hernandez, C. Thomaz
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引用次数: 1

Abstract

Face recognition is a multidisciplinary field that involves subjects in neuroscience, computer science and statistical learning. Some recent research in neuroscience has indicated that the ability of our memory relies on the capability of orthogonalizing (pattern separation) and completing (pattern prototyping) partial patterns in order to encode, store and recall information. From a computational viewpoint, pattern separation can be cast in the subspace learning area while pattern prototyping is closer to manifold learning methods. So, subspace (or manifold) learning techniques have a close biological inspiration and reasonability in terms of computational methods to possibly exploring and understanding the human behavior of recognizing faces. Therefore, the aim of this paper is threefold. Firstly, we review some theoretical aspects about perceptual and cognitive processes related to the mechanisms of pattern separation and pattern prototyping. Then, the paper presents the basic idea of manifold learning and its relationship with subspace learning with focus on the dimensionality reduction problem. Finally, we present the Discriminant Principal Component Analysis (DPCA) and the Self-Organized Manifold Mapping (SOMM) algorithm to exemplify respectively pattern separation and completion techniques. We show experimental results to demonstrate the effectiveness of DPCA and SOMM algorithms on well-framed face image analysis.
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判别成分分析和自组织流形映射用于探索和理解图像面空间
人脸识别是一个涉及神经科学、计算机科学和统计学习等学科的多学科领域。最近的一些神经科学研究表明,我们的记忆能力依赖于正交化(模式分离)和完成(模式原型)部分模式的能力,以编码、存储和回忆信息。从计算的角度来看,模式分离可以投射到子空间学习区域,而模式原型更接近于流形学习方法。因此,子空间(或流形)学习技术在计算方法方面具有密切的生物学灵感和合理性,可以探索和理解人脸识别的人类行为。因此,本文的目的是三重的。首先,我们回顾了与模式分离和模式原型机制相关的知觉和认知过程的一些理论方面。然后,本文介绍了流形学习的基本思想及其与子空间学习的关系,重点讨论了降维问题。最后,我们提出了判别主成分分析(DPCA)和自组织流形映射(SOMM)算法,分别举例说明了模式分离和补全技术。实验结果证明了DPCA和SOMM算法在框架良好的人脸图像分析中的有效性。
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