Offline Signature Verification System Using CNN

Dr.Prof.Sharada, Surwade Prerana, Tarate Priti, Kolaj Shweta4
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Abstract

One of the challenging and effective ways of identifying a person through biometric techniques is Signature verification as compared to the traditional handcrafted system, where a forger has access and also attempts to imitate it which is used in commercial scenarios, like bank check payment, business organizations, educational institutions, government sectors, health care industry etc. so the signature verification process is used for human examination of a single known sample. There are mainly two types of signature verification: static and dynamic. i) Static or offline verification is the process of verifying an electronic or document signature after it has been made, ii) Dynamic or online verification takes place as a person creates his/her signature on a digital tablet or a similar device. Compared, Offline signature verification is not efficient and slow for a large number of documents. Therefore, although vast and extensive research on signature verification there is a need to more focus on and review the online signature verification method to increase efficiency using deep learning. In this project, we achieve 94.58% accuracy using a convolutional neural network.
使用 CNN 的离线签名验证系统
与传统的手工系统相比,签名验证是通过生物识别技术识别个人身份的一种具有挑战性的有效方法,因为在传统的手工系统中,伪造者可以进入并试图模仿,而签名验证则用于商业场景,如银行支票支付、商业组织、教育机构、政府部门、医疗保健行业等。签名验证主要有两种类型:静态和动态。i) 静态或离线验证是在电子或文件签名完成后对其进行验证的过程;ii) 动态或在线验证是在个人在数字平板电脑或类似设备上创建签名时进行的。相比之下,离线签名验证的效率不高,而且对于大量文件来说速度较慢。因此,尽管对签名验证进行了大量和广泛的研究,但仍有必要更加关注和审查在线签名验证方法,以利用深度学习提高效率。在本项目中,我们使用卷积神经网络实现了 94.58% 的准确率。
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