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Suitable models for face geometry normalization in facial expression recognition

机译:面部表情识别中用于面部几何标准化的合适模型

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摘要

Recently, facial expression recognition has attracted much attention in machine vision research because of its various applications. Accordingly, many facial expression recognition systems have been proposed. However, the majority of existing systems suffer from a critical problem: geometric variability. It directly affects the performance of geometric feature-based facial expression recognition approaches. Furthermore, it is a crucial challenge in appearance feature-based techniques. This variability appears in both neutral faces and facial expressions. Appropriate face geometry normalization can improve the accuracy of each facial expression recognition system. Therefore, this paper proposes different geometric models or shapes for normalization. Face geometry normalization removes geometric variability of facial images and consequently, appearance feature extraction methods can be accurately utilized to represent facial images. Thus, some expression-based geometric models are proposed for facial image normalization. Next, local binary patterns and local phase quantization are used for appearance feature extraction. A combination of an effective geometric normalization with accurate appearance representations results in more than a 4% accuracy improvement compared to several state-of-the-arts in facial expression recognition. Moreover, utilizing the model of facial expressions which have larger mouth and eye region sizes gives higher accuracy due to the importance of these regions in facial expression. (C) 2015 SPIE and IS&T
机译:近来,面部表情识别由于其各种应用而在机器视觉研究中引起了很多关注。因此,已经提出了许多面部表情识别系统。但是,大多数现有系统都存在一个关键问题:几何可变性。它直接影响基于几何特征的面部表情识别方法的性能。此外,这是基于外观特征的技术中的关键挑战。这种可变性在中性脸部和面部表情中均会出现。适当的人脸几何标准化可以提高每个人脸表情识别系统的准确性。因此,本文提出了不同的几何模型或形状进行归一化。人脸几何归一化消除了人脸图像的几何可变性,因此,可以准确地利用外观特征提取方法来表示人脸图像。因此,提出了一些基于表情的几何模型用于面部图像归一化。接下来,将局部二进制模式和局部相位量化用于外观特征提取。有效的几何归一化与准确的外观表示相结合,与面部表情识别中的几种最新技术相比,可将准确性提高4%以上。此外,由于这些区域在面部表情中的重要性,利用具有较大的嘴和眼区域大小的面部表情模型可以提供更高的准确性。 (C)2015 SPIE和IS&T

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