Verinote - 利用卷积神经网络检测假币

Sreejit Nair, Farhan Shaikh, Elrich Thomas, Mizan Shaikh, Mrs. Priyanka Sherkhane
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引用次数: 0

摘要

假钞泛滥对全球金融系统和经济构成了重大威胁。为解决这一问题,出现了先进的技术解决方案,如假钞检测系统 "FCDS"。该系统利用先进的图像处理、机器学习和数据分析技术,准确有效地识别假钞[1]。FCDS 的工作原理是分析法定货币上的各种防伪特征,包括水印、防伪链、全息图和微缩印刷。该系统利用图像识别和模式分析来区分真假钞票。机器学习算法在训练系统识别伪造者试图复制的细微差别方面发挥着核心作用。FCDS 可以部署在从银行和金融机构到零售企业的各种环境中,为打击伪造提供了一个强大且可扩展的解决方案[1]。通过快速识别伪钞,它有助于防止经济损失和维护金融交易的完整性。本摘要介绍了假币检测系统的性质及其在维护金融安全和信心方面的重要性。将其融入现代银行和商业系统是实现防伪金融生态系统的重要一步。
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Verinote - Fake Currency Detection Using Convolutional Neural Network
The proliferation of counterfeit money poses a significant threat to financial systems and economies worldwide. To solve this problem, advanced technological solutions have emerged, such as the counterfeit money detection system “FCDS”. The system leverages advanced image processing, machine learning and data analysis techniques to identify counterfeit bills accurately and effectively [1]. FCDS works by analyzing various security features found on legal tender, including watermarks, security chains, holograms and microprinting. Using image recognition and pattern analysis, the system distinguishes between real and fake money. Machine learning algorithms play a central role in training systems to recognize the subtle nuances that counterfeiters try to reproduce. FCDS can be deployed in a variety of contexts, from banks and financial institutions to retail businesses, providing a robust and scalable solution to combat counterfeiting [1]. By quickly identifying fraudulent notes, it helps prevent economic loss and maintain the integrity of financial transactions. This summary describes the nature of counterfeit currency detection systems and its importance in maintaining financial security and confidence. Its integration into modern banking and commerce systems represents an important step towards a counterfeit-proof financial ecosystem.
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