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An Adaptive Biometric System Based on Palm Texture Feature and LVQ Neural Network

机译:基于Palm纹理特征和LVQ神经网络的自适应生物识别系统

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We propose an adaptive biometric system based on the palm texture feature and LVQ2 neural network. The user's palm image is acquired by a scanner and preprocessed to be a labeled palm contour in the binary image format. Then, the positions of 12 feature points are identified speedily and roughly on the contour and refined to be more precise with a proposed correction mechanism. By referring the positions of feature points, six subimages of five fingers and the palm are obtained and transformed into six feature vectors with a modified texture descriptor of LFP (local fuzzy pattern). We employ the LVQ2 to learn the prototypes of feature vectors of each user. Therefore, an unknown user's palm feature vector is compared with prototypes to identify or verify his identity.
机译:我们提出了一种基于Palm纹理特征和LVQ2神经网络的自适应生物识别系统。用户的Palm图像由扫描仪获取,并以二进制图像格式预处理为标记的Palm轮廓。然后,在轮廓上快速且大致地识别12个特征点,并通过所提出的校正机构更精确地精确。通过参考特征点的位置,获得六个手指和手掌的六个子镜,并转换成具有LFP的修改的纹理描述符(局部模糊模式)的六个特征向量。我们采用LVQ2学习每个用户的特征向量的原型。因此,将未知的用户的手掌特征向量与原型进行比较以识别或验证他的身份。

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