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Wavelets-based facial expression recognition using a bank of support vector machines

机译:使用支持向量机库的基于小波的面部表情识别

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摘要

A human face does not play its role in the identification of an individual but also communicates useful information about a person's emotional state at a particular time. No wonder automatic face expression recognition has become an area of great interest within the computer science, psychology, medicine, and human-computer interaction research communities. Various feature extraction techniques based on statistical to geometrical data have been used for recognition of expressions from static images as well as real-time videos. In this paper, we present a method for automatic recognition of facial expressions from face images by providing discrete wavelet transform features to a bank of seven parallel support vector machines (SVMs). Each SVM is trained to recognize a particular facial expression, so that it is most sensitive to that expression. Multi-classification is achieved by combining multiple SVMs performing binary classification using one-against-all approach. The outputs of all SVMs are combined using a maximum function. The classification efficiency is tested on static images from the publicly available Japanese Female Facial Expression database. The experiments using the proposed method demonstrate promising results.
机译:人脸在识别个人时不会发挥作用,但会在特定时间传达有关人的情绪状态的有用信息。难怪自动面部表情识别已成为计算机科学,心理学,医学和人机交互研究界的一个重要领域。基于统计数据到几何数据的各种特征提取技术已用于识别静态图像和实时视频中的表情。在本文中,我们提出了一种通过向一组七个并行支持向量机(SVM)提供离散小波变换特征来自动识别面部图像中面部表情的方法。每个SVM都经过训练以识别特定的面部表情,因此对该表情最敏感。通过组合使用一对一方法进行二进制分类的多个SVM来实现多重分类。使用最大功能组合所有SVM的输出。分类效率在来自公开提供的日本女性面部表情数据库的静态图像上进行测试。使用提出的方法进行的实验证明了有希望的结果。

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