Image processing based Feature extraction of Bangladeshi banknotes

Z. Ahmed, S. Yasmin, M. Islam, R. Ahmed
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引用次数: 20

Abstract

Counterfeit currency is a burning question throughout the world. The counterfeiters are becoming harder to track down because of their rapid adoption of and adaptation with highly advanced technology. One of the most effective methods to stop counterfeiting can be the widespread use of counterfeit detection tools/software that are easily available and are efficient in terms of cost, reliability and accuracy. This paper presents a core software system to build a robust automated counterfeit currency detection tool for Bangladeshi bank notes. The software detects fake currency by extracting existing features of banknotes such as micro-printing, optically variable ink (OVI), water-mark, iridescent ink, security thread and ultraviolet lines using OCR (Optical Character recognition), Contour Analysis, Face Recognition, Speeded UP Robust Features (SURF) and Canny Edge & Hough transformation algorithm of OpenCV. The success rate of this software can be measured in terms of accuracy and speed. This paper also focuses on the pros and cons of implementation details that may degrade the performance of image processing based paper currency authentication systems.
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基于图像处理的孟加拉钞票特征提取
假币是全世界亟待解决的问题。造假者正变得越来越难以追查,因为他们迅速采用并适应了高度先进的技术。制止假冒的最有效方法之一可能是广泛使用容易获得的、在成本、可靠性和准确性方面效率高的假冒检测工具/软件。本文提出了一个核心的软件系统,以建立一个强大的自动假币检测工具孟加拉钞票。该软件利用OCR(光学字符识别)、轮廓分析、人脸识别、加速鲁棒特征(SURF)和OpenCV的Canny Edge & Hough变换算法,提取纸币的现有特征,如微印刷、光学可变墨水(OVI)、水印、彩虹墨水、安全线和紫外线线,从而检测假币。该软件的成功率可以从准确性和速度两方面来衡量。本文还重点讨论了可能降低基于图像处理的纸币认证系统性能的实现细节的优缺点。
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