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结合Gabor特征和自适应加权Fisher准则的人脸识别 被引量:3

Combination of Gabor features and adaptive weighted Fisher criteria face recognition
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摘要 在基于Fisher准则的字典学习算法中,初始字典的选取和目标函数的构建,严重影响字典学习的效果。为了减少初始字典的影响,提高算法的表达和判别能力。提出了一种结合Gabor特征和自适应加权Fisher准则的人脸识别算法。该算法首先采用Gabor滤波器提取人脸特征,将提取到的Gabor人脸特征作为人脸训练集;通过添加遗忘函数和根据样本间的距离对训练样本自适应加权,改进Fisher准则字典学习算法;利用测试样本编码系数的误差进行识别。在人脸库上的实验表明,算法不仅能很好地提取图像的特征信息,而且可以有效地提高人脸识别率。 In the dictionary learning algorithms based on Fisher criterion, the selection of initial dictionary, and the constructionof the objective function, seriously influence the effect of dictionary learning. In order to reduce the influence of initialdictionary, improve the ability of expression and discrimination. A face recognition algorithm is presented based on Gaborfeatures and adaptive weighted Fisher criteria. Firstly, Gabor filter is used to extraction face feature, and use the Gabor facialfeatures as the face training sets. Secondly, by adding the attenuation function, and adaptive weighting the training set,improve the effect of the Fisher criterion dictionary learning algorithm. Finally, the coefficient errors of the test samplecoding, are used to identify the category. The experimental results on AR and Extend Yale database show that this algorithmis not only a very good image information extract algorithm, but also can effectively improve the accuracy rate of facerecognition.
作者 刘桂红 李丹 孙劲光 LIU Guihong;LI Dan;SUN Jinguang(College of Electronics and Information Engineering, Liaoning Technical University, Huludao, Liaoning 125105, China;Institute of Graduate, Liaoning Technical University, Huludao, Liaoning 125105, China)
出处 《计算机工程与应用》 CSCD 北大核心 2016年第22期169-173,共5页 Computer Engineering and Applications
关键词 字典学习 GABOR特征 自适应加权 遗忘函数 人脸识别 dictionary learning Gabor features adaptive weighting forgotten function face recognition
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