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首页> 外文期刊>Multimedia Tools and Applications >Particle swarm optimization based block feature selection in face recognition system
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Particle swarm optimization based block feature selection in face recognition system

机译:基于粒子群优化的面部识别系统中的块特征选择

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摘要

Face is one of the most widely used and accepted biometric traits. Face recognition systems are now being utilized in many applications ranging from individual (e.g., smartphone user authentication) to large scale (e.g., border crossing screening) scenarios. Most face recognition systems employ feature selection after feature extraction to enhance the accuracy of the frameworks. In other words, feature selection is one of the important phases that any recognition system must go through as the final results depend on it. Thus, in this paper, we present an optimized feature selection method based on Particle Swarm Optimization (PSO) to select a block of feature instead of single feature to ensure the distinctiveness and variations of features with application to face recognition system. In particular, first the captured face image is divided into a regular number of blocks (sub-images), then Binarized Statistical local features (BSIF) local descriptor is applied on each block for feature extraction. Next, a PSO scheme is utilized to select the blocks/features. The nearest neighbour classifier is employed to get the value of the fitness function (here, equal error rate (EER)) for block/feature selection. The blocks with the smallest EERs are chosen to represent the face image representation and recognition. Experimental results on public ORL faces database show promising results. The proposed face recognition system obtained EER equals to 1.028% with only 4 blocks out of 16, and recognition rate up to 93.5%. While the system was able to obtain an EER equals to 0.5% and recognition rate = 97% using 8 blocks out of 64 blocks.
机译:面部是最广泛使用和接受的生物识别性状之一。现在在许多应用中使用面部识别系统,从个人(例如,智能手机用户身份验证)到大规模(例如,边界交叉筛选)场景。大多数面部识别系统在特征提取后使用特征选择,以提高框架的准确性。换句话说,特征选择是任何识别系统必须经过最终结果的重要阶段之一取决于它。因此,在本文中,我们介绍了一种基于粒子群优化(PSO)的优化特征选择方法,以选择特征块而不是单个特征,以确保具有应用于面部识别系统的特征的独特性和变化。特别地,首先将捕获的面部图像分成常规块(子图像),然后在每个块上应用二值化统计局部特征(BSIF)本地描述符以进行特征提取。接下来,利用PSO方案来选择块/功能。用于获取块/特征选择的FITHSIC功能的值(此处,等于错误率(eer))的值。选择具有最小eERs的块以表示面部图像表示和识别。公共ORL FACE数据库的实验结果显示了有希望的结果。所提出的面部识别系统获得EER等于1.028%,仅为16个块,识别率高达93.5%。虽然系统能够获得eer等于0.5%,并且使用64个块的8个块识别率= 97%。

著录项

  • 来源
    《Multimedia Tools and Applications 》 |2021年第24期| 33257-33273| 共17页
  • 作者单位

    El Ibrahimi Univ Bordj Bou Arreridj Comp Sci Dept Mohamed El Bachir El Anceur 34000 Algeria|El Ibrahimi Univ Bordj Bou Arreridj MSE Lab Mohamed El Bachir El Anceur 34000 Algeria;

    El Ibrahimi Univ Bordj Bou Arreridj Comp Sci Dept Mohamed El Bachir El Anceur 34000 Algeria|El Ibrahimi Univ Bordj Bou Arreridj MSE Lab Mohamed El Bachir El Anceur 34000 Algeria;

    El Ibrahimi Univ Bordj Bou Arreridj Comp Sci Dept Mohamed El Bachir El Anceur 34000 Algeria|El Ibrahimi Univ Bordj Bou Arreridj MSE Lab Mohamed El Bachir El Anceur 34000 Algeria;

    SUNY Polytech Inst Dept Network & Comp Secur Utica NY 13502 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Face recognition; Optimization; Particle Swarm Optimization (PSO); Feature Selection;

    机译:人脸识别;优化;粒子群优化(PSO);特征选择;

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