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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >Optimization-based methodology for training set selection to synthesize composite correlation filters for face recognition
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Optimization-based methodology for training set selection to synthesize composite correlation filters for face recognition

机译:基于优化的训练集选择方法,用于合成用于脸部识别的复合相关滤波器

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摘要

Face recognition has been addressed with pattern recognition techniques such as composite correlation filters. These filters are synthesized from training sets which are representative of facial classes. For this reason, the filter performance depends greatly on the appropriate selection of the training set. This set can be selected either by a filter designer or by a conventional method. This paper presents an optimization-based methodology for the automatic selection of the training set. Given an optimization algorithm, the proposed methodology uses its main mechanics to iteratively examine a given set of available images in order to find the best subset for the training set. To this end, three objective functions are proposed as optimization criteria for training set selection. The proposed methodology was evaluated by undertaking face recognition under variable illumination and facial expressions. Four optimization algorithms and three composite correlation filters were used to test the proposed methodology. The Maximum Average Correlation Height filter designed by Grey Wolf Optimizer obtained the best performance under homogeneous illumination and facial expressions, while the Unconstrained Nonlinear Composite Filter designed by either Grey Wolf Optimizer or (1+1)-Evolution Strategy obtained the best performance under variable illumination. The proposed methodology selects training sets for the synthesis of composite filters with competitive results comparable to the results reported in the face recognition literature. (C) 2016 Elsevier B.V. All rights reserved.
机译:人脸识别已通过模式识别技术(例如复合相关滤波器)解决。这些过滤器是从代表面部类别的训练集中合成的。因此,滤波器的性能很大程度上取决于训练集的适当选择。该集合可以由滤波器设计者或通过常规方法来选择。本文提出了一种基于优化的方法来自动选择训练集。给定优化算法,所提出的方法使用其主要机制来迭代检查给定的可用图像集,以便找到训练集的最佳子集。为此,提出了三个目标函数作为训练集选择的优化标准。通过在可变光照和面部表情下进行面部识别来评估所提出的方法。四个优化算法和三个复合相关滤波器被用来测试该方法。由Gray Wolf Optimizer设计的最大平均相关高度滤镜在均匀照明和面部表情下获得最佳性能,而由Gray Wolf Optimizer或(1 + 1)-Evolution策略设计的无约束非线性复合滤波器在可变照明条件下获得最佳性能。 。所提出的方法选择用于合成复合滤波器的训练集,其竞争结果可与人脸识别文献中报道的结果相媲美。 (C)2016 Elsevier B.V.保留所有权利。

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