一种利用局部三元模式检测人脸图像欺骗的新方法

M. Diviya, Susmita Mishra
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引用次数: 5

摘要

生物识别欺骗被广泛理解为欺骗生物识别系统将非法用户识别为真实用户的能力。为了保持良好的安全性,可靠的欺骗检测工具是必要的。技术的巨大发展使生物识别技术得以在取证、访问控制、监控或在线商务等不同领域得到应用。新的生物识别范式将密码和卡片变成了最好的钥匙。该方法将面部纹理作为特征。采用局部三元模式方法提取人脸图像的微纹理特征,并将提取的局部三元模式转换为上模式和下模式。此外,这些模式还用于生成直方图。将特征直方图输入SVM分类器,对检测到离群值的特征进行分类,即图像是否被欺骗或是否为真实图像。
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A novel approach for detecting facial image spoofing using local ternary pattern
Biometrie spoofing is widely understood as the ability to fool a biometric system in recognizing an illegitimate user as a genuine one. To keep a goodlevel of security, reliable spoofing detection tools are necessary. Immense growth of technology permitted the use of biometrics in diverse fields such as forensics, access control, surveillance or online commerce. The new biometric paradigm has transformed passwords and cards into human as the best key. The proposed approach considers facial texture as a feature. Further the microtextural features of the facial images are extracted using Local Ternary Pattern approach and the extracted Local Ternary patterns are converted into upper pattern and lower pattern. Further the patterns are used to generate histograms. The feature histograms are fed into SVM classifier to classify the features from which the outlier is detected i.e whether any spoofing is done with the image or it is a real image.
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