基于扩展局部二值模式和主成分分析的面部表情识别混合方法

Gopal Krishan Prajapat, Rakesh Kumar
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引用次数: 0

摘要

面部特征的提取和识别在人类非语言互动中起着重要的作用,是姿态、言语、面部表情、行为和动作等信息传递的关键因素之一。本文使用扩展的局部二值模式进行特征提取,并使用主成分分析(PCA)进行降维。利用欧几里得距离法计算和比较了样本图像和模型图像的投影。扩展局部二值模式与主成分分析的结合(ELBP+PCA)提高了识别率的准确性,同时降低了评估复杂度。对所提出的面部表情识别方法的评价主要集中在识别率的表现上。在JAFFE,扩展Cohn-Kanade图像数据库上进行了一系列测试,以验证算法并比较方法的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Approach for Facial Expression Recognition Using Extended Local Binary Patterns and Principal Component Analysis
Facial feature extraction and recognition plays a prominent role in human non-verbal interaction and it is one of the crucial factors among pose, speech, facial expression, behaviour and actions which are used in conveying information about the intentions and emotions of a human being. In this article an extended local binary pattern is used for the feature extraction process and a principal component analysis (PCA) is used for dimensionality reduction. The projections of the sample and model images are calculated and compared by Euclidean distance method. The combination of extended local binary pattern and PCA (ELBP+PCA) improves the accuracy of the recognition rate and also diminishes the evaluation complexity. The evaluation of proposed facial expression recognition approach will focus on the performance of the recognition rate. A series of tests are performed for the validation of algorithms and to compare the accuracy of the methods on the JAFFE, Extended Cohn-Kanade images database.
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