基于深度学习的签名识别应用

Nurullah Çalık, Onur Can Kurban, Ali Riza Yilmaz, L. Durak-Ata, T. Yıldırım
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引用次数: 4

摘要

如今,随着生物特征研究的不断增多,生物特征数据的多样性不断增加,评价方法也不断采用新的方法。传统的生物识别技术,如面部、指纹、手机等,现在已经让位于各种各样的生物识别技术,这些生物识别技术包含了更多的人的特征信息,包括运动信息。在本研究中,基于卷积神经网络(CNN)的深度学习方法在非线性签名识别问题上的性能得到了验证。在这种非实时签名识别应用中,我们尝试使用深度学习方法来降低处理负荷和内存需求。研究中创建了两个不同参与者编号的数据集。通过在这些数据集上使用不同比例的训练和测试数据来检验系统的性能和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Signature recognition application based on deep learning
Nowadays, with the increase of biometric studies, the diversity of biometric data increases and new methods are used in evaluation methods. Traditional biometrics, such as face, fingerprints, handpieces, now leave their place to a variety of biometrics, which contain characteristic information about more people and include movement information. In this study, the performance of the deep learning method based on convolutional neural network (CNN) is demonstrated on a nonlinear signature recognition problem. In this non-real-time signature recognition application, it has been tried to reduce the process load and memory requirement by using deep learning method. Two data sets with different participant numbers were created in the study. The performance and reliability of the system are examined by various ratios of training and testing data on these data sets.
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