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Statistical edge-based feature selection for counterfeit coin detection

机译:基于统计边缘的假冒硬币检测特征选择

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The number of counterfeit coins released into circulation is persistently increasing. According to official reports, the mass majority of these coins are circulated in the European Union member countries. This paper presents a robust method for counterfeit coin detection based on coin stamp differences between genuine and counterfeit coins. A set of measures based on edge differences are proposed in this paper. The proposed method compares the edge width, edge thickness, number of horizontal and vertical edges, and total number of edges between a test coin and a set of genuine reference coins. The method extends the measures to generate a defect map by subtracting the test coin image from the reference coins to count the number of pixels in small regions of the coin. Additionally, the Signal-to-Noise Ratio (SNR), Mean Square Error (MSE), and Structural Similarity (SSIM) which are well-known measures to track the differences between two images are also applied to the coin image. The sets of features are then placed into index space where each vector represents the features of one test coin and a reference coin. The final feature vector represents the features set of one test coin and is computed by averaging the feature value of vectors in the index space. This feature vector is used to train a classifier to learn the edge feature differences between the two classes. The proposed method achieved precision and recall rates as high as 99.6% and 99.3% respectively, demonstrating the effectiveness and robustness of the selected edge features in authenticating coins. The method was evaluated on a real-life dataset of Danish coins as part of a collaborative effort.
机译:释放到循环中的假币数量持续增加。根据官方报告,这些硬币的大多数在欧洲联盟成员国分布。本文介绍了基于原装和伪造硬币之间的硬币邮票差异的假冒硬币检测的稳健方法。本文提出了一系列基于边缘差异的措施。该方法比较了边缘宽度,边缘厚度,水平和垂直边缘的数量,以及测试硬币和一组真正的参考硬币之间的边缘总数。该方法通过从参考硬币中减去测试硬币图像来延长措施以产生缺陷映射,以计算硬币的小区域中的像素数。另外,作为追踪两个图像之间的众所周知的措施的信噪比(SNR),均方误差(MSE)和结构相似度(SSIM)也应用于硬币图像。然后将特征集放入索引空间中,其中每个向量代表一个测试硬币和参考硬币的特征。最终特征向量表示一个测试硬币的特征集,通过平均索引空间中的矢量特征值来计算。此特征向量用于训练分类器以了解两个类之间的边缘特征差异。所提出的方法分别达到了高达99.6%和99.3%的精度,召回率分别高达99.6%,证明了所选边缘特征在验证硬币中的有效性和稳健性。该方法在丹麦硬币的实际数据集中评估,作为合作努力的一部分。

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