基于卷积神经网络的掌纹识别

Weiyong Gong, Xinman Zhang, Bohua Deng, Xuebin Xu
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引用次数: 10

摘要

在经典的掌纹识别算法中,掌纹识别需要在分类识别之前提取掌纹特征,这将影响识别率。为了解决这一问题,本文采用卷积神经网络(CNN)结构Alexnet实现掌纹识别。首先,根据掌纹的几何形状特征,对掌纹的ROI区域进行裁剪;然后将处理后的ROI区域作为卷积神经网络的输入。然后利用PRelu激活函数对网络进行训练,选择最佳学习率和超参数。最后对掌纹进行分类和识别。将该方法应用于PolyU多光谱掌纹图像数据库和PolyU 2D+3D掌纹数据库,单光谱识别率高达99.99%。
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Palmprint Recognition Based on Convolutional Neural Network-Alexnet
In the classic algorithm, palmprint recognition requires extraction of palmprint features before classification and recognition, which will affect the recognition rate. To solve this problem, this paper uses the convolutional neural network (CNN) structure Alexnet to realize palmprint recognition. First, according to the characteristics of the geometric shape of palmprint, the ROI area of palmprint was cut out. Then the ROI area after processing is taken as input of convolutional neural network. Next the PRelu activation function is used to train the network to select the best learning rate and super parameters. Finally, the palmprint was classified and identified. The method was applied to PolyU Multi-Spectral Palmprint Image Database and PolyU 2D+3D Palmprint Database, and the recognition rate of a single spectrum was up to 99.99%.
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