An efficient face model for facial expression recognition

Sunil Kumar, M. Bhuyan, B. Chakraborty
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引用次数: 4

Abstract

Existing facial expression recognition (FER) algorithms aim to extract discriminative features from a face. These discriminative features can be extracted only from the informative regions of a face. In this view, several face models are proposed which are mainly intended to extract geometrical features from a face, and hence these models may not be suitable for extract discriminative texture features from a face. We proposed a novel face model based on projection analysis of a face. Our proposed projection analysis evaluates the distribution of informative regions of a face. This is done by projecting the expressive face images onto their corresponding neutral images. Hence, the proposed face model can efficiently extract distinctive texture features from a face. Additionally, the proposed face model can extract geometrical features as well. The performance of the proposed face model is evaluated on MUG datasets which shows that the proposed face model outperforms several existing face models. Also, the proposed face model can give a recognition accuracy of 97.3% which is significantly better than the performance of state-of-the-art face models.
一种高效的面部表情识别模型
现有的面部表情识别算法旨在从人脸中提取判别特征。这些判别特征只能从人脸的信息区域中提取。在这种情况下,提出了几种主要用于提取人脸几何特征的人脸模型,因此这些模型可能不适合提取人脸的判别性纹理特征。提出了一种基于人脸投影分析的人脸模型。我们提出的投影分析评估了人脸信息区域的分布。这是通过将富有表情的面部图像投射到相应的中性图像上来完成的。因此,所提出的人脸模型可以有效地从人脸中提取出鲜明的纹理特征。此外,该人脸模型还可以提取人脸的几何特征。在人脸识别数据集上对所提人脸模型的性能进行了评估,结果表明所提人脸模型优于现有的几种人脸模型。同时,该人脸模型的识别准确率达到97.3%,明显优于现有人脸模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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