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Evolutionary feature synthesis for facial expression recognition

机译:进化特征合成用于面部表情识别

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摘要

Feature extraction is one of the key steps in object recognition. In this paper we propose a novel genetically inspired learning method for facial expression recognition (FER). Unlike current research on facial expression recognition that generally selects visually meaningful feature by hands, our learning method can discover the features automatically in a genetic programming-based approach that uses Gabor wavelet representation for primitive features and linearonlinear operators to synthesize new features. These new features are used to train a support vector machine classifier that is used for recognizing the facial expressions. The learned operator and classifier are used on unseen testing images. To make use of random nature of a genetic program, we design a multi-agent scheme to boost the performance. We compare the performance of our approach with several approaches in the literature and show that our approach can perform the task of facial expression recognition effectively.
机译:特征提取是对象识别的关键步骤之一。在本文中,我们提出了一种新颖的遗传启发学习方法来进行面部表情识别(FER)。与当前关于面部表情识别的研究通常通过人工选择视觉上有意义的特征不同,我们的学习方法可以通过基于遗传编程的方法自动发现特征,该方法使用Gabor小波表示原始特征并使用线性/非线性算子来合成新特征。这些新功能用于训练支持向量机分类器,该分类器用于识别面部表情。博学的运算符和分类器用于看不见的测试图像。为了利用遗传程序的随机性,我们设计了一种多智能体方案来提高性能。我们将我们的方法与文献中的几种方法的性能进行了比较,表明我们的方法可以有效地执行面部表情识别的任务。

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