Offline-Signature Verification System using Transfer Learning VGG-19

Kazi Tanvir, Saidul Mursalin Khan, Al-Jobair Ibna Ataur, Shaikh Allahma Galib
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引用次数: 0

Abstract

Nowadays, Signature verification is one of the most common and effective biometric systems that used to recognize people in many institutions. In modern era of technology, advanced neural networks have provided us an option to solve this issue. In this study, The Robinreni Signature Dataset was utilized to classify the signatures of 64 people, each of whom had 64 original signatures and 64 fake signatures. One of the most popular CNN architecture, namely, VGG19, were used. Firstly, the dataset was distributed accordingly 1649 and 500 for training and validation. Secondly, preprocess the data to train the model. After that the model training process is started using transfer learning approach. Obtained experimental results that VGG19 is best suited for datasets with a validation accuracy of 98.79%.. Everyone has their own unique signature that used to identify and verify important documents and legal transactions. Our study shows the effectiveness of VGG19 for Signature Verification task. The findings will aid in the development of more effective Deep Learning-based signature verification methods.
基于迁移学习的离线签名验证系统VGG-19
目前,签名验证是许多机构中最常用、最有效的生物识别系统之一。在现代科技时代,先进的神经网络为我们提供了解决这一问题的选择。在本研究中,利用Robinreni签名数据集对64个人的签名进行分类,每个人有64个真实签名和64个假签名。我们使用了最流行的CNN架构之一VGG19。首先,对数据集分别进行1649和500的分布,进行训练和验证。其次,对数据进行预处理,训练模型。然后使用迁移学习方法开始模型训练过程。实验结果表明,VGG19最适合于数据集,验证准确率为98.79%。每个人都有自己独特的签名,用于识别和验证重要文件和法律交易。研究表明了VGG19在签名验证任务中的有效性。这些发现将有助于开发更有效的基于深度学习的签名验证方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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