Neuro - Genetic approaches to classification of Face Images with effective feature selection using hybrid classifiers

K. Umamaheswari, S. Sumathi, S. Sivanandam
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引用次数: 7

Abstract

The ever-increasing volume in the collection of image data in various fields of science, medicine, security and other fields has brought the necessity to extract knowledge. Face classification/recognition is one of the challenging problems of computer vision. The use of Data mining techniques has a legitimate and enabling ways to explore these large image collections using neuro-genetic approaches. A novel Symmetric Based Algorithm is proposed for face detection in still gray level images, which acts as a selective attentional mechanism. The three face classifiers/recognizers, Linear Discriminant Analysis (LDA), Line Based Algorithm (LBA) and Kernel Direct Discriminant Analysis (KDDA) are fused using Radial Basis network for efficient feature extraction of the face images. The use of Genetic algorithm approach optimizes the weights of neural network to extract only the essential features that effectively and successively improves the classification/recognition accuracy. A total of 1024 images for 22 subjects taken from BioID Laboratory, Texas, USA are used for analysis.
基于混合分类器的有效特征选择的人脸图像神经遗传分类方法
科学、医学、安防等各个领域的图像数据收集量的不断增加,带来了提取知识的必要性。人脸分类/识别是计算机视觉中具有挑战性的问题之一。数据挖掘技术的使用是一种合法且可行的方法,可以使用神经遗传学方法来探索这些大型图像集。提出了一种新的基于对称的静态灰度图像人脸检测算法,作为一种选择性注意机制。利用径向基网络将线性判别分析(LDA)、基于线的算法(LBA)和核直接判别分析(KDDA)这三种人脸分类/识别方法融合在一起,对人脸图像进行有效的特征提取。利用遗传算法方法优化神经网络的权值,只提取有效且连续提高分类/识别精度的基本特征。分析使用来自美国德克萨斯州BioID实验室的22名受试者的1024张图像。
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