Cosmetic applied based face recognition for biometric passport

IF 0.8 Q4 ROBOTICS
Z. Choudhury, M. Rabbani
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引用次数: 0

Abstract

Purpose Nowadays, the use of forged e-passport is increasing, which is threatening national security. It is important to improve the national security against international crime or terrorism. There is a weak verification process caused by lack of identification processes such as a physical check, biometric check and electronic check. The e-passport can prevent the passport cloning or forging resulting from the illegal immigration. The paper aims to discuss these issues. Design/methodology/approach This paper focuses on face recognition to improve the biometric authentication for an e-passport, and it also introduces facial permanent mark detection from the makeup or cosmetic-applied faces, twins and similar faces. An algorithm is proposed to detect the cosmetic-applied facial permanent marks such as mole, freckle, birthmark and pockmark. Active Shape Model into Active Appearance Model using Principal Component Analysis is applied to detect the facial landmarks. Facial permanent marks are detected by applying the Canny edge detector and Gradient Field Histogram of Oriented Gradient. Findings This paper demonstrated an algorithm and proposed facial marks detection from cosmetic or makeup-applied faces for a secure biometric passport in the field of personal identification for national security. It also presented to detect and identify identical twins and similar faces. This paper presented facial marks detection from the cosmetic-applied face, which can be mixed with traditional methods. However, the use of the proposed technique faced some challenges due to the use of cosmetic. The combinations of the algorithm for facial mark recognition matching with classical methods were able to attain lower errors in this proposed experiment. Originality/value The proposed method will enhance the national security and it will improve the biometric authentication for the e-passport. The proposed algorithm is capable of identifying facial marks from cosmetic-applied faces accurately, with less false positives. The proposed technique shows the best results.
基于面部识别的生物特征护照美容应用
如今,伪造电子护照的使用越来越多,威胁着国家安全。加强国家安全防范国际犯罪和恐怖主义十分重要。由于缺乏身体检查、生物特征检查和电子检查等识别程序,核实程序薄弱。电子护照可以防止因非法移民而导致的护照克隆或伪造。本文旨在探讨这些问题。设计/方法/方法本文主要研究人脸识别技术以改进电子护照的生物特征认证,并介绍了从化妆或化妆脸、双胞胎脸和相似脸中检测面部永久标记的方法。提出了一种检测面部痣、雀斑、胎记、麻子等永久性美容痕迹的算法。利用主成分分析方法,将主动形状模型转化为主动外观模型,实现面部特征点的检测。采用Canny边缘检测器和梯度场直方图进行人脸永久标记检测。在国家安全的个人身份识别领域,本文展示了一种基于化妆品或化妆面部的安全生物识别护照的人脸标记检测算法。它还被用于检测和识别同卵双胞胎和相似的面孔。本文提出了一种可与传统方法混合使用的面部标记检测方法。然而,由于使用化妆品,所提出的技术的使用面临一些挑战。将该算法与经典的人脸标记识别匹配方法相结合,可以获得较低的误差。提出的方法将增强国家安全,并将改进电子护照的生物识别认证。该算法能够准确地从化妆脸部识别面部标记,并且误报率更低。该方法取得了较好的效果。
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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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
21
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