基于特征集成方法的印度货币分类与假钞识别

Pratap Narra, J. Kirar
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引用次数: 2

摘要

视障人士在货币识别和假钞识别方面面临着很大的困难。纸币在不同时间段的变化也增加了视障人士手动识别纸币特征的难度。此外,印度流通的假钞数量每年都在增加。计算机辅助货币识别和假钞检测可以帮助人们在不依赖人工干预的情况下识别货币面额。在这项工作中,我们提出了一种货币识别算法,该算法可以对印度货币进行分类,并帮助识别假钞,而无需人工干预,从而防止假钞在该国流通。在这项工作中,使用陈维斯分割法对纸币的安全特征进行分割,然后使用集合分类器进行分类和假钞识别。实验结果表明,即使在小数据集上也有很好的结果。该方法可推广到不同国家的货币识别。
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Indian Currency Classification and Fake Note Identification using Feature Ensemble Approach
Visually challenged people face a lot of difficulty in currency recognition and counterfeit notes identification. The change of currency notes during different time frames also adds more difficulty in recognizing features in currency notes manually by the visually impaired. Further, the number of counterfeit notes in circulation in India is increasing every year. Computer-aided currency recognition and fake note detection can help people in the identification of currency denomination without any dependency on manual intervention. In this work, we have proposed a currency recognition algorithm that can classify an Indian currency and help in identifying the fake notes without manual intervention and thereby preventing their circulation in the country. In this work, Chan Vese Segmentation is used to segment the security features of a note and then an ensemble of classifiers is used for classification and fake note identification. Experimental results show promising results even on the small dataset. The method can be extended to currency recognition for different countries.
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