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Automated Currency Recognition Using Neural Networks

机译:自动化货币识别使用神经网络

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Paper currency recognition (PCR) is one sort of insightful framework which is a significant need of the present computerization frameworks in the cutting edge universe of today. It has different potential applications including electronic banking, cash checking frameworks, cash trade machines, and so on. This paper proposes a programmed paper cash acknowledgment framework for paper currency. It utilizes InceptionV3 for extraction and neural network for classification and utilizes the instance of Indian paper currency as a model. The strategy is very sensible regarding exactness. The framework manages 3100 pictures. The pictures are dispersed in six classifications-10, 20, 50, 100, 200, and 500, and they are being utilized for examination and characterization. The proposed calculation is completely programmed and requires no human intercession. To approve the adequacy of system and appropriateness of neural network for cash picture arrangement, examinations have been finished with different classifiers like K-nearest neighbors (KNN) and support vector machine (SVM). The proposed procedure delivers very palatable outcomes as far as acknowledgment and effectiveness as it has accomplished an average accuracy of 97.2% over six categories.
机译:纸币识别(PCR)是一种富有洞察力的框架,这是当今尖端宇宙中本计算机化框架的重要需求。它具有不同的潜在应用,包括电子银行,现金检查框架,现金贸易机器等。本文提出了一种编程的纸币签发纸币的纸币致力框架。它利用Inceptionv3用于提取和神经网络进行分类,并利用印度纸币的实例作为模型。对精确性非常明智的策略。框架管理3100张照片。这些图像分散在六种分类-10,20,50,100,200和500中,并且它们被用于检查和表征。所提出的计算完全编程,不需要人类闭路。为了批准现金图像安排的系统网络的充分性和神经网络的适当性,通过像K-CORMALY邻居(KNN)等不同的分类器完成了检查,并支持向量机(SVM)。该拟议的程序将其具有非常适应的结果,即确认和有效性,因为它已经完成了97.2%以上的六个类别的平均准确性。

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