基于分数阶傅里叶变换相位提取的腕部静脉图像个体认证

Negar Massihi, S. Rashidi
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引用次数: 0

摘要

如今,生物识别系统在个人信息保护方面发挥着重要作用。每个人都有独特的手腕静脉图案,可以用于身份验证。分数阶傅里叶变换(FrFT)将信号转化为复数形式。本文将FrFT用于图像的时频分析。经过预处理阶段,从背景中提取纹理,计算每幅图像的FrFT系数相位。所提出的方法使用PUT数据库对个体进行验证。该数据库由1200张手腕和1200张手掌静脉图像组成。本文仅使用腕部静脉图像。分别使用Receiver Operating Characteristic (ROC)和Support Vector Machine (SVM)进行特征选择和分类。结果表明,腕部静脉图像可用于验证,FrFT在作用点的平均准确率为99.65±0.95%,是一种有效的特征提取工具。
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Authentication of Individuals based on Wrist Vein Images by Extracting Phase of Fractional Fourier Transform
Nowadays, biometric systems play a main role in personal information protection. Each person has a distinct pattern of wrist veins that can be used for authentication. Fractional Fourier transform (FrFT) changes signal to complex form. In this paper, FrFT was utilized for the time-frequency analysis of images. After the pre-processing stage and extracting veins from the background, the phase of FrFT coefficients was computed for each image. The PUT database was used in the proposed method for verifying individuals. This database consists of 1200 wrist and 1200 palm vein images. In this paper, wrist vein images were only utilized. Receiver Operating Characteristic (ROC) and Support Vector Machine (SVM) were used for feature selection and classification, respectively. The results showed that wrist vein images can be used for verification and FrFT is a capable tool for feature extraction as the average accuracy was obtained 99.65±0.95% in the operating point.
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