A review of feature extraction techniques BTC, DCT, Walsh and PCA with FDM and BDM for face recognition

S. Tanuja, G. Sonal
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引用次数: 2

Abstract

In the modern era the world comes nearer to every individual as an IT revolution where all the applications are computerized. As the level of security breaches and frauds of transaction increases, it requires highly secure identification and personal verification technologies. Though there are various biometric traits such as iris, fingerprint and palm print etc., we focused on face recognition as it is socially acceptable and reliable. Here user identity plays a very important role to uniquely verify or authenticate the individual person. Instead of designing more complex system, which is more expensive and which requires more software and hardware resources, it is essential to think about to bridge the gap which will create a system with simplicity, less costly and efficient, as well as socially acceptable. Utilizing biometrics for personal authentication is becoming convenient and considerably more accurate than current methods (such as the utilization of passwords or PINs). The factors which highly impact the face recognition system performance are illumination and pose variations. Feature extraction is the key to reach face recognition. In literature various feature extraction techniques in spatial and frequency domain are available. This paper gives overview of the existing feature extraction techniques PCA, DCT, Walsh and BTC for face recognition and comparative analysis.
结合FDM和BDM的特征提取技术BTC、DCT、Walsh和PCA在人脸识别中的应用
在现代时代,世界越来越接近每个人,因为所有的应用程序都是计算机化的IT革命。随着安全漏洞和交易欺诈的增加,需要高度安全的身份识别和个人验证技术。虽然有各种各样的生物特征,如虹膜、指纹和掌纹等,但我们专注于面部识别,因为它是社会接受和可靠的。在这里,用户身份对于唯一地验证或验证个人身份起着非常重要的作用。与其设计更复杂的系统,这是更昂贵的,这需要更多的软件和硬件资源,重要的是要考虑弥合差距,这将创造一个简单,成本更低,效率更高,以及社会可接受的系统。利用生物识别技术进行个人身份验证正变得越来越方便,而且比目前的方法(如使用密码或pin)要准确得多。光照和姿态变化是影响人脸识别系统性能的重要因素。特征提取是实现人脸识别的关键。文献中有各种空间和频域特征提取技术。本文综述了现有的用于人脸识别的特征提取技术PCA、DCT、Walsh和BTC,并进行了对比分析。
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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