基于ROI和CNN的印尼纸币真伪与标称检测

Andy Maulana Yusuf, S. Suyanto
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引用次数: 1

摘要

钞票是一种经济工具,作为一种普遍接受的交换媒介。然而,它很容易伪造,如在印度尼西亚,其中的纸币伪造的情况不断增加。因此,我们开发了一些以电脑为基础的应用程序来检测钞票的真伪,以减少伪造案件。不幸的是,它们要么只关注名义检测,要么只关注真实性检测。此外,他们使用无噪声数据集和增强过程,以避免过度拟合或预测误差。在本文中,开发了印度尼西亚纸币检测系统,使用感兴趣区域(ROI)和卷积神经网络(CNN)来识别真伪和标称。评估结果表明,真实性模型达到了95%的准确率,而名义分类模型达到了99%的准确率。
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Authenticity and Nominal Detection of Indonesian Banknotes Using ROI and CNN
A banknote is an economic tool used as a generally accepted medium of exchange. However, it is prone to counterfeiting, such as in Indonesia, in which the case of banknotes counterfeiting continues to increase. Hence, some computer-based applications have been developed to detect the authenticity of banknotes to reduce counterfeiting cases. Unfortunately, they focus on either nominal detection only or authenticity detection only. Besides, they use noiseless datasets and augmentation processes to be subject to overfitting or prediction errors. In this paper, the Indonesian banknote detection system is developed to identify both authenticity and nominal using the region of interest (ROI) and convolutional neural network (CNN). The evaluation shows that the authenticity model achieves a high accuracy of 95%, while the nominal classification model achieves an accuracy of 99%.
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