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机构地区:[1]扬州大学信息工程学院
出 处:《计算机工程与应用》2008年第4期208-211,248,共5页Computer Engineering and Applications
基 金:国家自然科学基金(the National Natural Science Foundation of China under Grant No.60472060);江苏省博士后科研资助计划项目;江苏省高校自然科学基金(No.05KJB520152)
摘 要:对于单训练样本人脸识别,基于每人多个训练样本的传统人脸识别算法效果均不太理想。尤其是基于Fisher线性鉴别准则的一些方法,由于类内散布矩阵为零矩阵,根本无法进行识别。针对这一问题进行了分析研究,提出了一种新的样本扩充方法,即泛滑动窗法。采用"大窗口,小步长"的机制进行窗口图像采集和样本扩充,不仅增加了训练样本,而且充分保持和强化了原始样本模式固有的类内和类间信息。然后,使用加权二维线性鉴别分析方法(Weighted2DLDA)对上面获得的窗口图像进行特征抽取。在ORL国际标准人脸库上进行的实验表明了所提算法的可行性和有效性。For face recognition with single training sample per person,the conventional face recognition methods which work with many training samples don't function well.Especially,a number of methods based on Fisher linear discriminant criterion can't work because the within-class scatter matrix is a matrix with all elements being zero.To overcome the above problem,we propose a new sample augment method,called generalized slide window,in this paper.In order to effectively maintain and strengthen the within-class and between-class information,we obey the rule"big window,small step" to produce a set of window images for each training image.Finally,weighted two-dimensional Fisher linear discriminant analysis is performed on the window images obtained. The experimental results on ORL face database show that the proposed method is effective and promising in face recognition with single training sample per person.
关 键 词:单样本 泛滑动窗 加权二维线性鉴别分析 人脸识别
分 类 号:TP391[自动化与计算机技术—计算机应用技术]
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