基于人工神经网络的人体指关节面认证过程混合特征选择方法

Mobarakol Islam, M. Hasan, M. M. Farhad, T. R. Tanni
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引用次数: 4

摘要

一种利用指关节面进行个人身份识别的改进的人体认证过程显示出了良好的效果。手指关节弯曲产生的纹理图案是高度独特的,使表面成为独特的生物识别标识。本文提出了一种利用关节面进行高效、安全的个人身份识别的新方法。构造了一种特定的数据采集装置来采集指关节表面图像,并利用训练好的神经网络提出了一种高效的指关节指纹算法。来自每个用户的手指背面表面图像被归一化,以最小化指关节图像的缩放、平移和旋转变化。该方法的主要优点是将Lempel-Ziv特征选择与主成分分析相结合的混合特征选择方法用于特征提取,并使用基于缩放共轭梯度的人工神经网络进行识别。实验结果表明,该方法是有效的。与现有的其他基于指背表面的生物识别系统相比,该系统具有更高的效率,可以实现更高的实时识别率。
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Human authentication process using finger knuckle surface with artificial Neural Networks based on a hybrid feature selection method
An improved human authentication process using knuckle surface for personal identification has shown promising results. The texture pattern produced by the finger knuckle bending is highly unique and makes the surface a distinctive biometric identifier. In this paper we proposed a new approach for efficient and more secure personal identification using knuckle surface. A specific data acquisition device is constructed to capture the finger knuckle surface images, and then an efficient finger knuckle print algorithm is presented with trained neural network. The finger back surface images from each of the users are normalized to minimize the scale, translation and rotational variations in the knuckle images. The main attraction of this proposed method is that a hybrid feature selection method of Lempel-Ziv Feature Selection and Principle Component Analysis is used for feature extraction and an artificial Neural Network based on Scaled Conjugate Gradient is used for the recognition. The experimental results from the proposed approach are promising and confirm. Compared with the other existing finger-back surface based biometric systems, the proposed system is more efficient and can achieve higher recognition rate in real time.
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