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Biometric Identification Based on Feature Fusion with PCA and SVM

机译:基于特征融合与PCA和SVM的生物识别

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Biometric identification is gaining ground compared to traditional identification methods. Many biometric measurements may be used for secure human identification. The most reliable among them is the iris pattern because of its uniqueness, stability, unforgeability and inalterability over time. The approach presented in this paper is a fusion of different feature descriptor methods such as HOG, LIOP, LBP, used for extracting iris texture information. The classifiers obtained through the SVM and PCA methods demonstrate the effectiveness of our system applied to one and both irises. The performances measured are highly accurate and foreshadow a fusion system with a rate of identification approaching 100% on the UPOL database.
机译:与传统的识别方法相比,生物识别技术正在发展。许多生物特征测量可以用于安全的人类识别。其中最可靠的是虹膜图案,因为它具有独特性,稳定性,不可伪造性和随时间变化的特性。本文提出的方法是融合了用于提取虹膜纹理信息的不同特征描述符方法(如HOG,LIOP,LBP)的融合。通过SVM和PCA方法获得的分类器证明了将我们的系统应用于一个和两个虹膜的有效性。所测量的性能非常准确,并预示了融合系统,在UPOL数据库上的识别率接近100%。

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