Multiview face recognition: from TensorFace to V-TensorFace and K-TensorFace.

Chunna Tian, Guoliang Fan, Xinbo Gao, Qi Tian
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引用次数: 31

Abstract

Face images under uncontrolled environments suffer from the changes of multiple factors such as camera view, illumination, expression, etc. Tensor analysis provides a way of analyzing the influence of different factors on facial variation. However, the TensorFace model creates a difficulty in representing the nonlinearity of view subspace. In this paper, to break this limitation, we present a view-manifold-based TensorFace (V-TensorFace), in which the latent view manifold preserves the local distances in the multiview face space. Moreover, a kernelized TensorFace (K-TensorFace) for multiview face recognition is proposed to preserve the structure of the latent manifold in the image space. Both methods provide a generative model that involves a continuous view manifold for unseen view representation. Most importantly, we propose a unified framework to generalize TensorFace, V-TensorFace, and K-TensorFace. Finally, an expectation-maximization like algorithm is developed to estimate the identity and view parameters iteratively for a face image of an unknown/unseen view. The experiment on the PIE database shows the effectiveness of the manifold construction method. Extensive comparison experiments on Weizmann and Oriental Face databases for multiview face recognition demonstrate the superiority of the proposed V- and K-TensorFace methods over the view-based principal component analysis and other state-of-the-art approaches for such purpose.

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多视图人脸识别:从TensorFace到V-TensorFace和K-TensorFace。
非受控环境下的人脸图像受到摄像机视角、光照、表情等多种因素的影响。张量分析为分析不同因素对面部变化的影响提供了一种方法。然而,TensorFace模型在表示视图子空间的非线性方面存在困难。在本文中,为了打破这一限制,我们提出了一种基于视图流形的TensorFace (V-TensorFace),其中潜在视图流形保留了多视图面空间中的局部距离。此外,提出了一种用于多视图人脸识别的核化TensorFace (K-TensorFace),以保持图像空间中潜在流形的结构。这两种方法都提供了一个生成模型,该模型包含一个用于不可见视图表示的连续视图流形。最重要的是,我们提出了一个统一的框架来推广TensorFace, V-TensorFace和K-TensorFace。最后,开发了一种类似期望最大化的算法,用于迭代估计未知/未见视图的人脸图像的身份和视图参数。在PIE数据库上的实验表明了该方法的有效性。在Weizmann和Oriental Face数据库上进行的多视图人脸识别的广泛比较实验表明,所提出的V-和K-TensorFace方法优于基于视图的主成分分析和其他最先进的方法。
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