Fake Currency Detection using Modified Faster Region-Based Convolutional Neural Network

O. Ibitoye
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Abstract

Significant technological advancements in the printing and scanning industries exacerbated the counterfeiting problem. As a consequence, counterfeit currency has an impact on the economy and diminishes the value of genuine currency. Therefore, it is essential to detect the counterfeit currency. The majority of previous methods rely on hardware and image processing techniques. Using these methods to detect counterfeit currency is inefficient and time-consuming. We have proposed a system for the detection of counterfeit currency using a modified faster region-based convolution neural network (Faster R-CNN) to circumvent the aforementioned issue. This study identifies counterfeit currency by analyzing images of currency. One thousand images of currency note are used as dataset to train a Faster-RCNN model on inception V2 architecture to learn the feature map of currencies. Upon successful training and validation of the model, 500 images of counterfeit currencies were used to test the model. The proposed method efficiently identifies 96% of counterfeit currency images tested. Other evaluation means such as mean average precision and detection accuracy show that the developed system has an accuracy of 97%.
利用修改后的基于区域的更快卷积神经网络检测假币
印刷和扫描行业的重大技术进步加剧了伪造问题。因此,假币对经济产生了影响,并降低了真币的价值。因此,检测假币至关重要。以往的大多数方法都依赖于硬件和图像处理技术。使用这些方法检测假币既低效又耗时。我们提出了一种使用改进的更快区域卷积神经网络(Faster R-CNN)检测假币的系统,以规避上述问题。这项研究通过分析货币图像来识别假币。我们使用一千张纸币图像作为数据集,训练基于 V2 架构的 Faster-RCNN 模型,以学习货币的特征图。模型训练和验证成功后,使用 500 张假币图像对模型进行测试。所提出的方法有效识别了 96% 的假币图像。平均精确度和检测准确度等其他评估手段表明,所开发系统的准确度达到了 97%。
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