Combination of Genetic Algorithm and Neural Network to Select Facial Features in Face Recognition Technique

Taraneh Kamyab, H. Daealhaq, Ali Mojarrad Ghahfarokhi, Fatemehalsadat Beheshtinejad, Ehsan Salajegheh
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引用次数: 1

Abstract

Face recognition methods are computational algorithms that follow aim to identify a person's image according to the bank of images they have of different people. So far, various methods have been proposed for face recognition, which can generally be divided into two categories based on face structure and based on facial features. Based on this, many algorithms have been introduced and used for face recognition. Genetic algorithm has been one of the successful algorithms for face recognition. In this article, we first briefly explained the genetic algorithm and then used the combination of neural network and genetic algorithm to select and classify facial features The presented method has been evaluated using individual features and combined features of the face region. Composite features perform better than face region features in experimental tests. Also, a comprehensive comparison with other facial recognition techniques available in the FERET database is included in this paper. The proposed method has produced a classification accuracy of 94%, which is a significant improvement and the best classification accuracy among the results established in other studies.
遗传算法与神经网络相结合的人脸识别技术
人脸识别方法是一种计算算法,其目的是根据不同人的图像库来识别一个人的图像。迄今为止,人脸识别的方法多种多样,一般可分为基于人脸结构和基于人脸特征两大类。在此基础上,许多算法被引入并用于人脸识别。遗传算法是人脸识别中比较成功的算法之一。本文首先简要介绍了遗传算法,然后结合神经网络和遗传算法对人脸特征进行选择和分类,并利用人脸区域的个体特征和组合特征对所提出的方法进行了评价。在实验测试中,复合特征的表现优于人脸区域特征。此外,本文还与FERET数据库中可用的其他面部识别技术进行了全面的比较。该方法的分类准确率达到了94%,这是一个显著的进步,也是其他研究结果中分类准确率最高的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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