一种针对有限训练数据的人脸准确识别鲁棒表情否定算法

G. Tharshini, H. G. C. P. Dinesh, G. Godaliyadda, Mevan Ekanayake
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引用次数: 6

摘要

尽管迄今为止在不同面部表情下的人脸识别方面已经有了重要而有效的贡献,但大多数方法都需要在数据库中存储个人的多张图像。然而,当可用的训练样本数量有限时,这个问题变得更具挑战性,就像用于监视和安全应用的表情不变人脸识别一样。本文提出了一种简单有效的方法,可以集成到任何人脸和表情识别系统中,在训练样本有限的情况下提高整体识别精度。该方法利用同一表情下不同被试的先验信息估计表达图像的中性分量。基本上,通过分析特定表情对中性脸的影响,开发了一种将表情图像转换为中性脸的消去过程。为了合理地利用不同主题的共同表情信息,采用对齐策略,对每个表情使用特定的表情模板,并将图像扭曲到相应的表情脸模板。对表情图像进行消去后,采用主成分分析(PCA)进行降维,并用余弦相似度匹配进行分类。在Cohn-Kanade数据库上的实验结果表明,即使数据库中每个类只有一个训练样本,该方法也是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A robust expression negation algorithm for accurate face recognition for limited training data
Although important and effective contributions on face recognition under varying facial expressions have been reported up to date, most of the methods need multiple images of an individual stored in the database. However, this problem becomes more challenging when a limited number of training samples are available as is the case for expression invariant face identification for surveillance and security applications. This paper proposes a simple and effective method that can be integrated into any face and expression recognition system to improve the overall recognition accuracy even under limitation of training samples. In this approach, neutral component of the expressive image is estimated utilizing prior information obtained from different subjects under the same expression. Basically by analyzing the impact of a particular expression on a neutral face a nullification process is developed to convert the expressive image to a neutral face. In order to make it justifiable to utilize common expression information for different subjects, an alignment strategy is employed where for each expression a specific expression template is used, and the images are warped to their corresponding expression face template. After negating the facial expression from the expressive images, principal component analysis (PCA) is applied to reduce the dimension and cosine similarity matching is used for classification. The experimental results on Cohn-Kanade database exhibit the effectiveness of the proposed method even when there is a single training sample per class is available in the database.
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