面部表情分解

Hongcheng Wang, N. Ahuja
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引用次数: 233

摘要

本文提出了一种新的面部表情分解方法——高阶奇异值分解(HOSVD),它是矩阵奇异值分解的自然推广。我们从显示七种基本面部表情的图像语料库中学习表情子空间和人子空间,而不是求助于专家编码的面部表情参数。提出了一种人脸和面部表情同步识别算法,该算法可以将给定图像划分为7个基本面部表情类别之一,然后利用学习到的表情子空间模型综合新人脸的其他面部表情。这项工作的贡献主要体现在两个方面。首先,我们提出了一种新的基于HOSVD的人物与表情映射建模方法,用于新人物的面部表情合成。其次,通过面部表情的分解,实现了人脸和面部表情的同时识别。实验结果说明了人子空间和表情子空间在合成和识别任务中的能力。作为合成质量的定量度量,我们提出使用梯度最小平方误差(GMSE)来度量原始图像和合成图像之间的梯度差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial expression decomposition
In this paper, we propose a novel approach for facial expression decomposition - higher-order singular value decomposition (HOSVD), a natural generalization of matrix SVD. We learn the expression subspace and person subspace from a corpus of images showing seven basic facial expressions, rather than resort to expert-coded facial expression parameters. We propose a simultaneous face and facial expression recognition algorithm, which can classify the given image into one of the seven basic facial expression categories, and then other facial expressions of the new person can be synthesized using the learned expression subspace model. The contributions of this work lie mainly in two aspects. First, we propose a new HOSVD based approach to model the mapping between persons and expressions, used for facial expression synthesis for a new person. Second, we realize simultaneous face and facial expression recognition as a result of facial expression decomposition. Experimental results are presented that illustrate the capability of the person subspace and expression subspace in both synthesis and recognition tasks. As a quantitative measure of the quality of synthesis, we propose using gradient minimum square error (GMSE) which measures the gradient difference between the original and synthesized images.
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