基于PCA/ICA的可变形面部模型的建立

Vitavat Vitayakailert, Paramate Horkaew
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引用次数: 1

摘要

人脸识别是计算生物计量学中应用最广泛的领域之一,因为它能够在较少干扰的情况下进行识别。尽管它在许多工业应用中取得了成功,但迄今为止最可靠的解决方案还是基于特征脸方法。另一方面,变形外观模型由于其相当灵活的性质,最近引起了计算机视觉研究社区的极大兴趣。因此,在提高其可靠性和效率方面做出了很多努力,以达到与知名对手相当的水平。新兴的想法集中在将非线性不仅包括在面部边界上,而且包括在其纹理元素上,从而使面部合成更加逼真。因此,本文的主要贡献是在AAM框架的基础上建立了具有ICA的非线性面部外观模型。为此,对现有方案进行了对比实验,并对其优缺点进行了讨论。统计分析提出了一个最优配置,在此基础上可以建立改进的变形面模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On building PCA/ICA deformable facial models
Face recognition is one of the most widely adopted fields in computational bio-metrics due to its ability to make identification while being less intrusive. Despite its success in many industrial applications, the most reliable solutions have thus far been based on an Eigenface approach. The Deformable appearance model, on the other hand, has recently attracted much interest from the Computer Vision research community due to its rather more flexible nature. As such, much effort has been made on enhancing its reliability and efficiency to on par with its renowned counterpart. Emerging ideas have been focusing on including non-linearity on not only facial boundaries but also on its texture elements, so that more realistic facial synthesis can be made. The main contribution of this paper is therefore to build on top of an AAM framework the non-linear facial appearance model with ICA. To this end, experiments on comparing with existing scheme were made, and with their pros and cons discussed. Statistical analyses suggest an optimal configuration, upon which an improved deformable face model may be built.
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