Individual Tensorface Subspaces for Efficient and Robust Face Recognition that do not Require Factorization

Sung W. Park, M. Savvides
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Abstract

Facial images change appearance due to multiple factors such as poses, lighting variations, facial expressions, etc. Tensor approach, an extension of the conventional 2D matrix, is appropriate to analyze facial factors since tensors make it possible to construct multilinear models using multiple factor structures. However, tensor algebra provides some difficulties in practical usage. First, it is difficult to decompose the multiple factors (e.g. pose, illumination, expression) of a test image, especially when the factor parameters are unknown or are not in the training set. Second, for face recognition, as the number of factors is larger, it becomes more difficult to construct reliable multilinear models and it requires more memory and computation to build a global model. In this paper, we propose a novel Individual TensorFaces which does not require tensor factorization, a step which was necessary in previous tensorface research for face recognition. Another advantage of this individual subspace approach is that it makes the face recognition tasks computationally and analytically simpler. Based on various experiments, we demonstrate the proposed Individual TensorFaces bring better discriminant power for classification.
不需要分解的高效鲁棒人脸识别的单个张面子空间
面部图像由于姿势、光线变化、面部表情等多种因素而改变外观。张量方法是传统二维矩阵的一种扩展,适合于分析面部因素,因为张量可以使用多因素结构构建多线性模型。然而,张量代数在实际应用中存在一些困难。首先,很难分解测试图像的多个因素(如姿态、光照、表情),特别是当这些因素参数未知或不在训练集中时。其次,对于人脸识别来说,随着因素数量的增加,构建可靠的多线性模型变得更加困难,构建全局模型需要更多的内存和计算量。在本文中,我们提出了一种新的个体张sorfaces,它不需要张量分解,这是以前的张量脸研究中人脸识别所必需的一步。这种单独子空间方法的另一个优点是,它使人脸识别任务在计算和分析上更简单。通过各种实验,我们证明了所提出的单个TensorFaces具有更好的分类能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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