Active Contour Based Segmentation and CNN for Palmprint Recognition

Wafaa Mohammed Cherif, T. B. Stambouli
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引用次数: 1

Abstract

Biometric authentication has proven to be a successful strategy for correctly recognizing a person’s identification. in particular, palmprint-based biometric systems have received increased attention in recent years, due to its high identification accuracy, utility and acceptance. The traditional method of palmprint recognition requires the extraction of palmprint characteristics before the classification, which has an impact on the recognition rate. To address this problem, the CNN Model LeNet-5 is used to propose a method for extracting discriminative features using Convolution Neural Networks. First, Segmentation based on Active Contours is used for ROI palmprint Extraction. Then the convolutional neural network is trained based on the extracted ROI region by selecting the optimal learning rate and hyperparameters. Finally, the palmprint was identified. The experiments demonstrated that The ROI extraction system could accurately find the most suitable Regions Of Interest, compared with existing main ROI extraction methods, our model proved competitive with the state-of-the-art. We achieved an overall accuracy of 97% using two hand databases : IITD hand database, and Tongji Contactless Palmprint Dataset.
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基于主动轮廓分割和CNN的掌纹识别
生物特征认证已被证明是正确识别个人身份的一种成功策略。近年来,基于掌纹的生物识别系统因其较高的识别精度、实用性和可接受性而受到越来越多的关注。传统的掌纹识别方法需要在分类前提取掌纹特征,这对识别率有一定的影响。为了解决这一问题,本文利用CNN模型LeNet-5提出了一种利用卷积神经网络提取判别特征的方法。首先,将基于活动轮廓的分割用于ROI掌纹提取。然后根据提取的ROI区域选取最优学习率和超参数对卷积神经网络进行训练。最后对掌纹进行了识别。实验表明,该ROI提取系统能够准确地找到最合适的感兴趣区域,与现有的主要ROI提取方法相比,该模型具有较强的竞争力。我们使用两个手部数据库:IITD手部数据库和同济非接触式掌纹数据集,达到了97%的总体准确率。
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