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Facial expression recognition using DCT features and neural network based decision tree

机译:使用DCT特征和基于神经网络的决策树进行面部表情识别

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Automatic analysis of human facial expression is one of the challenging problems in machine vision systems. The most expressive way humans display emotion is through facial expression. In this paper, we extend texture based facial expression recognition, with a method of 2D image processing implemented for extraction of features and a new neural network based decision trees. The algorithm applies a set of preprocessing and divides the image into two main parts (eyes and lips apart), and implements Discrete Cosine Transform (DCT) on each part to reduce image data size in different parts of the face. Different decision tree models have been tried in order to find the best recognition rate. Experimental results show that, such a combination of decision tree with neural network to identify different facial expressions improves the recognition rate significantly.
机译:人脸表情的自动分析是机器视觉系统中的难题之一。人类表达情感的最富有表现力的方式是面部表情。在本文中,我们扩展了基于纹理的面部表情识别,并实现了一种用于特征提取的2D图像处理方法以及一种基于决策树的新神经网络。该算法应用了一组预处理并将图像分为两个主要部分(眼睛和嘴唇分开),并在每个部分上实现了离散余弦变换(DCT),以减少面部不同部分的图像数据大小。为了找到最佳识别率,尝试了不同的决策树模型。实验结果表明,将决策树与神经网络相结合来识别不同的面部表情可以显着提高识别率。

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