基于Gabor滤波和SVM的机器学习认证系统的设计与实现

Shalini Singh, Indrajit Das, Md Golam Mohiuddin, Amogh Banerjee, Sonali Gupta
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引用次数: 3

摘要

当今世界最重要的要求是克服不同类型的攻击。生物识别技术中人类的行为和生理特征作为安全问题的解决方案具有最大的应用范围。然而,现有的人脸、虹膜、手掌、声音或指纹等生物识别系统在时间或空间上都非常复杂,因此不适合高安全性。为此,本文提出了手指静脉认证方法的设计与实现。该系统采用图像处理和机器学习相结合的算法实现。特征提取采用了凹痕、分形维数和gabor滤波算法,并利用支持向量机对提取的特征进行分类。一对一和一对全的分类算法准确率分别为98.75%和97.92%,执行时间分别为0.168秒和0.187秒。最后,对不同的分类算法进行了对比分析,并对利用机器学习的手指静脉认证系统的相关研究工作进行了对比分析。
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Design and Implementation of Gabor Filter and SVM based Authentication system using Machine Learning
The most vital requirement in today's world is to overcome the different types of attacks. Human behavioral and physiological features in biometrics have the largest scope as a solution for security issues. However, the existing biometric systems such as faces, iris, palm, voice or fingerprints are highly complex in terms of time or space or both, and thus are not suitable in high security. So the design and implementation of finger-vein authentication method is proposed in this paper. This system is implemented using a combination of image processing and machine learning algorithm. Lacunae, fractal dimension and gabor filter are the algorithms used for feature extraction and the classification of the extracted feature is done using the Support Vector Machine. The accuracy of classification algorithm for One-Versus-One and One-Versus-All is 98.75 % and 97.92 % and the execution time is 0.168 Seconds and 0.187 Seconds respectively. At the end the comparative analysis between different classification algorithm and previous research work related to Finger Vein Authentication System using Machine learning is provided.
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