基于Siamese神经网络的不同CNN体系结构签名伪造检测的比较

Soumya Jain, M. Khanna, Ankita Singh
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引用次数: 6

摘要

签名是表示了解和接受单据的最常见的方式。由于许多文件和合同现在开始使用无纸化电子格式,“签名”一词已大大扩大。无论采用哪种形式,签名的关键重要性都是用于管理安全性的身份验证。签名是最广泛使用的签名方式之一,在个人生活的财务、法律和社会方面发挥着至关重要的作用。因此,伪造签名,即虚假地复制另一个人的签名是一个最受关注的问题。由同一个人制作的两个或多个签名相同的可能性很小,因此使签名伪造检测成为一项艰巨的任务。我们的论文旨在将最先进的方法——暹罗神经网络——应用于选定的数据集,得出有意义的见解,并在这些神经网络的一些变体之间进行比较分析,以识别和验证手写签名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison among different CNN Architectures for Signature Forgery Detection using Siamese Neural Network
Signature is the most common way to indicate knowledge and acceptance of a document. As many documents and contracts are now starting to use paperless electronic formats, the term "signature" has been substantially broadened. Whichever form it takes, the key importance of the signature is identity authentication for managing security. Signatures being one of the most widely used methods for the same, play a crucial role in financial, legal, and social aspects of one's life. Thus, Signature forgery, that is falsely copying another individual’s signature is an issue of utmost concern. The chances of two or more signatures made by the same individual being identical are minimal, thus making signature forgery detection an arduous task. Our paper aims to apply the state-of-the-art methodology, Siamese Neural Networks, on the chosen data set, draw meaningful insights and perform a comparative analysis between some variants of these neural networks to identify and authenticate handwritten signatures.
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