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An EM based probabilistic two-dimensional CCA with application to face recognition

机译:基于EM的概率二维CCA,应用于面部识别

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摘要

Recently, two-dimensional canonical correlation analysis (2DCCA) has been successfully applied for image feature extraction. The method instead of concatenating the columns of the images to the one-dimensional vectors, directly works with two-dimensional image matrices. Although 2DCCA works well in different recognition tasks, it lacks a probabilistic interpretation. In this paper, we present a probabilistic framework for 2DCCA called probabilistic 2DCCA (P2DCCA) and an iterative EM based algorithm for optimizing the parameters. Experimental results on synthetic and real data demonstrate superior performance in loading factor estimation for P2DCCA compared to 2DCCA. For real data, three subsets of AR face database and also the UMIST face database confirm the robustness of the proposed algorithm in face recognition tasks with different illumination conditions, facial expressions, poses and occlusions.
机译:最近,二维规范相关分析(2DCCA)已成功应用于图像特征提取。 该方法而不是将图像的列连接到一维向量,直接与二维图像矩阵一起使用。 虽然2DCCA在不同的识别任务中运作良好,但它缺乏概率解释。 在本文中,我们为2DCCA呈现了一个名为概率2DCCA(P2DCCA)的概率框架以及用于优化参数的迭代EM基础算法。 与2DCCA相比,合成和实际数据对合成和实际数据的实验结果表明了P2DCCA的加载因子估计的优异性能。 对于真实数据,AR面部数据库的三个子集以及Umist面部数据库的稳健性在面部识别任务中的鲁棒性,具有不同的照明条件,面部表情,姿势和闭塞。

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