Combining LBP and Adaboost for facial expression recognition

Ying Zilu, Xieyan Fang
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引用次数: 38

Abstract

A novel approach to facial expression recognition based on the combination of local binary pattern (LBP) and Adaboost is proposed. Firstly, facial expression images are processed with LBP operator, which can eliminate the effect of environment lighting in a certain extent and has the powerful capability of texture feature description. And then facial expression features are presented with LBP histograms of expression image which is divided into several blocks. The features with powerful discriminability are selected by a modified Adaboost so as to predigest the design of classifier and shorten the cost time. Finally, the support vector machine (SVM) classifier is used for expression classification. The algorithm is implemented with Matlab and experimented on Japanese female facial expression database(JAFFE database). A facial expression recognition rate of 65.71% for person-independent is obtained and shows the effectiveness of the proposed algorithm.
结合LBP和Adaboost进行面部表情识别
提出了一种基于局部二值模式(LBP)和Adaboost相结合的面部表情识别新方法。首先,对面部表情图像进行LBP算子处理,可以在一定程度上消除环境光照的影响,并具有强大的纹理特征描述能力;然后用LBP直方图表示面部表情特征,将表情图像分成若干块。通过改进的Adaboost算法,选择识别能力强的特征,简化了分类器的设计,缩短了成本时间。最后,利用支持向量机分类器对表达进行分类。利用Matlab实现了该算法,并在日本女性面部表情数据库(JAFFE数据库)上进行了实验。在独立于人的情况下,人脸表情识别率达到65.71%,表明了算法的有效性。
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