Philippine Currency Counterfeit Detector using Image Processing

Jude Michael R. Apoloni, Sean Derrick G. Escueta, Julius T. Sese
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引用次数: 2

Abstract

Image processing is the utilization of a computer to process digital images through an algorithm. This method can also be used in detecting the security features of banknotes to tell if the banknote is authentic or counterfeit. Using algorithms such as Canny Edge Detection, Hough Line Transform, Optical Character Recognition and K-Means Clustering to detect Philippine currency banknote level 1 security features such as watermark, asymmetrical serial number, see-through print, and security thread. Canny Edge Detection would be used to detect edges and curves found on the banknotes. Hough Line Transform would be used to detect straight lines found on the banknotes. Optical Character Recognition (OCR) would be used to distinguish text found on the banknotes. K-means clustering would be used to detect color ranges used by the banknotes by means of vector quantization. The tests yield a result of 100% for 200-peso banknotes, 97.50% for 500-peso and 1000-peso banknotes, 96.67% for 50-peso banknotes 91.82% for 20-peso banknotes, and 91.67% for 100-peso banknotes, which has a mean average of 95.86% which is significantly higher than the average accuracy from previous studies of 86.27%.
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使用图像处理的菲律宾货币伪钞检测器
图像处理是利用计算机通过算法处理数字图像。这种方法还可以用于检测钞票的防伪特征,判断钞票的真伪。利用Canny边缘检测、Hough线变换、光学字符识别、k均值聚类等算法检测菲律宾货币钞票的水印、不对称序列号、透视打印、防伪线等一级防伪特征。精明的边缘检测将用于检测钞票上的边缘和曲线。霍夫线变换将用于检测钞票上的直线。光学字符识别(OCR)将用于区分钞票上的文字。k均值聚类通过向量量化的方法检测钞票使用的颜色范围。200比索纸币的准确率为100%,500比索纸币和1000比索纸币的准确率为97.50%,50比索纸币的准确率为96.67%,20比索纸币的准确率为91.82%,100比索纸币的准确率为91.67%,平均准确率为95.86%,明显高于以往研究的平均准确率86.27%。
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