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Face recognition system using PCA-ANN technique with feature fusion method

机译:使用PCA-ANN技术与特征融合方法的人脸识别系统

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Biometric technology plays a vital role for providing the security which is imperative part in secure system. Human face recognition is a potential method of biometric authentication. This paper presents a process of face recognition system using principle component analysis with Back-propagation neural network where features of face image has been combined by applying face detection and edge detection technique. In this system, the performance has been analyzed based on the proposed feature fusion technique. At first, the fussed feature has been extracted and the dimension of the feature vector has been reduced using Principal Component Analysis method. The reduced vector has been classified by Back-propagation neural network based classifier. In recognition stage, several steps are required. Finally, we analyzed the performance of the system for different size of the train database. The performance analysis shows that the efficiency has been enhanced when the feature extraction operation performed successfully. The performance of the system has been reached more than 92% for the adverse conditions.
机译:生物识别技术在提供安全性方面起着至关重要的作用,而安全性是安全系统中必不可少的部分。人脸识别是生物识别身份验证的一种潜在方法。本文提出了一种使用主成分分析和反向传播神经网络的人脸识别系统的过程,其中通过应用人脸检测和边缘检测技术将人脸图像的特征相结合。在该系统中,已基于提出的特征融合技术对性能进行了分析。首先,使用主成分分析方法提取出融合特征,并减小特征向量的维数。约简向量已经通过基于反向传播神经网络的分类器进行了分类。在识别阶段,需要几个步骤。最后,我们分析了针对不同规模的火车数据库的系统性能。性能分析表明,特征提取操作成功执行后,效率得到了提高。对于不利条件,系统的性能已达到92%以上。

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