基于深度信念网络的LDPP和LTP面部表情识别

Vasudha, D. Kakkar
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引用次数: 9

摘要

本文选择了局部定向位置模式(LDPP)和局部三元模式(LTP)作为人脸识别方法,它们比以往的局部二值模式(LBP)和局部定向模式(LDP)有很多优点。LDPP和LTP所选择的技术在它们的算法中是分离的,它们只帮助从图像中提取特征。自民党是自民党的改版。在典型的LDP中,只考虑了上边缘方向,而没有考虑像素的强度符号,这可能导致对相反类型的边缘像素进行相同的编码。LDPP克服了这一障碍,它进一步与LTP相结合,以获得更好的特征提取。一旦特征被提取出来,就会使用深度信念网络进行训练。在实验作品中,我们选择了愤怒、惊讶、厌恶、中性、悲伤、微笑等表情的10张图片。将LDPP和LTP串联起来,然后进行主成分分析(PCA)和一般判别分析(GDA)。进一步的训练,使用深度信念网络(Deep Belief Network, DBN),最终提高了识别率,达到95.3%的准确率,而非拼接的准确率为89.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial Expression Recognition with LDPP & LTP using Deep Belief Network
In this paper, local directional position pattern (LDPP) and local ternary pattern (LTP) are selected for facial recognition method which are having many advantages over previous techniques like local binary pattern (LBP) and local directional pattern (LDP). The selected techniques of LDPP and LTP are estrangement in their algorithms which help solely to extract features out of an image. LDPP is a revised form of LDP. In a typical LDP, only the top edge direction was taken into consideration, but strength sign of the pixel was not considered which may result in same code for opposite kind of edge pixel. This snag is overcome by LDPP which is further concatenated with LTP for better feature extraction. Once features are extracted they are trained using deep belief network. In the experimental work 10 images of each expression i.e. angry, surprise, disgust, neutral, sad, smile are selected. LDPP and LTP are concatenated followed by principal component analysis (PCA) and general discriminant analysis (GDA). Further for training, Deep Belief Network (DBN) is used which eventually increases the recognition rate and achieve accuracy of 95.3% which was 89.3% without concatenating.
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