AN EFFICIENT SELF-UPDATING FACE RECOGNITION SYSTEM FOR PLASTIC SURGERY FACE

A. Devi, A. Marimuthu
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引用次数: 4

Abstract

Facial recognition system is fundamental a computer application for the automatic identification of a person through a digitized image or a video source. The major cause for the overall poor performance is related to the transformations in appearance of the user based on the aspects akin to ageing, beard growth, sun-tan etc. In order to overcome the above drawback, Self-update process has been developed in which, the system learns the biometric attributes of the user every time the user interacts with the system and the information gets updated automatically. The procedures of Plastic surgery yield a skilled and endurable means of enhancing the facial appearance by means of correcting the anomalies in the feature and then treating the facial skin with the aim of getting a youthful look. When plastic surgery is performed on an individual, the features of the face undergo reconstruction either locally or globally. But, the changes which are introduced new by plastic surgery remain hard to get modeled by the available face recognition systems and they deteriorate the performances of the face recognition algorithm. Hence the Facial plastic surgery produces changes in the facial features to larger extent and thereby creates a significant challenge to the face recognition system. This work introduces a fresh Multimodal Biometric approach making use of novel approaches to boost the rate of recognition and security. The proposed method consists of various processes like Face segmentation using Active Appearance Model (AAM), Face Normalization using Kernel Density Estimate/Point Distribution Model (KDE-PDM), Feature extraction using Local Gabor XOR Patterns (LGXP) and Classification using Independent Component Analysis (ICA). Efficient techniques have been used in each phase of the FRAS in order to obtain improved results.
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一种高效的整形面部自更新识别系统
面部识别系统是通过数字化图像或视频源自动识别人的基本计算机应用程序。整体表现不佳的主要原因与用户外表的变化有关,这些变化基于衰老、胡须生长、晒黑等方面。为了克服上述缺点,开发了自更新流程,每次用户与系统交互时,系统都会学习用户的生物特征属性,并自动更新信息。整形外科的程序产生了一种技术和持久的手段,通过纠正面部特征的异常,然后治疗面部皮肤,以获得年轻的外观。当对个人进行整形手术时,面部特征会进行局部或整体的重建。但是,现有的人脸识别系统很难对整形手术带来的新变化进行建模,从而降低了人脸识别算法的性能。因此,面部整形手术在很大程度上改变了面部特征,从而对面部识别系统提出了重大挑战。这项工作介绍了一种新的多模式生物识别方法,利用新的方法来提高识别率和安全性。该方法包括使用主动外观模型(AAM)的人脸分割,使用核密度估计/点分布模型(KDE-PDM)的人脸归一化,使用局部Gabor XOR模式(LGXP)的特征提取以及使用独立成分分析(ICA)的分类等多个过程。为了获得更好的结果,在FRAS的每个阶段都使用了有效的技术。
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