Indian fake currency detection using image processing and machine learning

Sai Charan Deep Bandu, Murari Kakileti, Shyam Sunder Jannu Soloman, Nagaraju Baydeti
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Abstract

The escalating production of counterfeit notes, facilitated by advancements in color printing and scanning, poses a significant global challenge impacting economies and security. This issue, prevalent in countries like India, has negative ramifications, including the funding of illegal activities and terrorism. Despite efforts, such as demonetization in 2016, counterfeits persist, necessitating innovative solutions. The proposed model introduces a fake note detection system utilizing computer vision and machine learning, specifically a Convolutional Neural Network (CNN). CNN effectively extracts intricate features from input data, showcasing its proficiency in pattern recognition. Notably, the system focuses on individual security features within banknotes, distinguishing it from other approaches that analyze entire note images. The primary goal is swift and accurate detection and reduction of counterfeit circulation, contributing to the overall security of the economy. The proposed model resulted in an impressive accuracy of 91.66% for all the six security features in the Indian denomination of Rs. 500, 95.25% for all the six security features in the Indian denomination of Rs. 200, 92.66% for all the six security features in the Indian denomination of Rs.100.

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利用图像处理和机器学习检测印度假币
在彩色印刷和扫描技术进步的推动下,伪钞生产不断升级,对全球经济和安全构成了重大挑战。这一问题在印度等国十分普遍,造成了负面影响,包括为非法活动和恐怖主义提供资金。尽管做出了种种努力,如 2016 年的非货币化,但假钞问题依然存在,因此需要创新的解决方案。所提出的模型利用计算机视觉和机器学习,特别是卷积神经网络(CNN),引入了一个假钞检测系统。卷积神经网络能有效地从输入数据中提取复杂的特征,展示了其在模式识别方面的能力。值得注意的是,该系统侧重于钞票中的单个防伪特征,有别于其他分析整张钞票图像的方法。其主要目标是迅速准确地检测和减少伪钞流通,从而促进经济的整体安全。所提出的模型对印度 500 卢比面额的所有六种防伪特征的准确率达到了 91.66%,对印度 200 卢比面额的所有六种防伪特征的准确率达到了 95.25%,对印度 100 卢比面额的所有六种防伪特征的准确率达到了 92.66%。
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