Kernel-based Regularized Neighbourhood Preserving Embedding in face recognition

Pang Ying Han, A. Teoh
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Abstract

Face images always have significant intra-class variations due to different poses, illuminations and facial expressions. These variations trigger substantial deviation from the linearity assumption of data structure, which is essential in formulating linear dimension reduction technique. In this paper, we present a kernel based regularized graph embedding dimension reduction technique, known as kernel-based Regularized Neighbourhood Preserving Embedding (KRNPE) to address this problem. KRNPE first exploits kernel function to unfold the nonlinear intrinsic facial data structure. Neighbourhood Preserving Embedding, a graph embedding based linear dimension reduction technique, is then regulated based on Adaptive Locality Preserving Regulation Model, established in [7] to enhance the locality preserving capability of the projection features, leading to better discriminating capability and generalization performance. Experimental results on PIE and FERET face databases validate the effectiveness of KRNPE.
基于核的正则邻域保持嵌入人脸识别
由于不同的姿势、光照和面部表情,人脸图像总是有显著的班级内差异。这些变化引发了对数据结构的线性假设的重大偏离,这是制定线性降维技术所必需的。本文提出了一种基于核的正则化图嵌入降维技术,即基于核的正则化邻域保持嵌入(KRNPE)来解决这一问题。KRNPE首先利用核函数来展现非线性的内在面部数据结构。邻域保持嵌入是一种基于图嵌入的线性降维技术,基于[7]建立的自适应局部保持调节模型进行调节,增强投影特征的局部保持能力,从而获得更好的判别能力和泛化性能。在PIE和FERET人脸数据库上的实验结果验证了KRNPE的有效性。
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