Identity Representability of Facial Expressions: An Evaluation Using Feature Pixel Distributions

Qi Li, C. Kambhamettu
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引用次数: 1

Abstract

The study on how to represent appearance instances was the focus in most previous work in face recognition. Little attention, however, was given to the problem of how to select "good" instances for a gallery, which may be called the facial identity representation problem. This paper gives an evaluation of the identity representability of facial expressions. The identity representability of an expression is measured by the recognition accuracy achieved by using its samples as the gallery data. We use feature pixel distributions to represent appearance instances. A feature pixel distribution of an image is based on the number of occurrence of detected feature pixels (corners) in regular grids of an image plane. We propose imbalance oriented redundancy reduction for feature pixel detection. Our experimental evaluation indicates that certain facial expressions, such as the neutral, have stronger identity representability than other expressions, in various feature pixel distributions
面部表情的身份可表征性:使用特征像素分布的评估
如何表示外观实例一直是人脸识别领域的研究热点。然而,很少关注如何为画廊选择“好”实例的问题,这可能被称为面部身份表示问题。本文对面部表情的身份可表征性进行了评价。表达式的身份表征性是通过使用其样本作为库数据所获得的识别精度来衡量的。我们使用特征像素分布来表示外观实例。图像的特征像素分布基于在图像平面的规则网格中检测到的特征像素(角)的出现次数。我们提出了面向不平衡的冗余减少特征像素检测。我们的实验评估表明,在不同的特征像素分布中,某些面部表情(如中性表情)比其他表情具有更强的身份表征性
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