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An Automated Pattern Recognition Based Approach for Classification of Soiled Paper Currency Using Textural and Geometrical Features

机译:基于纹理和几何特征的基于模式识别的自动分类方法

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Research for automatic recognition and identification of paper currency (banknote) has gained popularity in recent years due to its potential applications, e.g., electronic banking, currency monitoring systems, money exchange machines, etc. Existing research work for identification of currency has some constraints that limit their accuracy. We are proposing a pattern recognition-based approach for the classification of Pakistani paper currency. The dataset used for our research work consists of 1750 banknotes, including light variated, torn, worn, dirty, and marked banknotes. The proposed approach was based on extraction of 371 textural features from entire image, as well as from 4 regions of interest. High dimensional feature set was then reduced to most discriminating features. Four classification models, i.e., K*. LogitBoost, PART, and Random Forest were used to evaluate the accuracy of our proposed approach. It was observed that using region of interest with reduced feature set resulted in better performance and lesser computational time as compared to existing approaches. The highest accuracy achieved was 100 % with Kstar classifier. The novelty of our research work lies in the fact that the proposed approach was capable of successfully classifying banknotes, even when the denomination was occluded or completely missing, as compared to existing approaches.
机译:由于纸币(纸币)的潜在应用,例如电子银行,货币监控系统,货币兑换机等,近年来,用于自动识别和识别纸币的研究受到了欢迎。限制了它们的准确性。我们正在提出一种基于模式识别的方法来对巴基斯坦纸币进行分类。我们的研究工作使用的数据集包括1750张钞票,包括浅色,撕裂,磨损,脏污和有标记的钞票。所提出的方法是基于从整个图像以及4个感兴趣的区域中提取371个纹理特征的。然后将高维特征集简化为大多数可区分特征。四个分类模型,即K *。使用LogitBoost,PART和Random Forest来评估我们提出的方法的准确性。观察到,与现有方法相比,使用具有减少的特征集的感兴趣区域可导致更好的性能和更少的计算时间。使用Kstar分类器达到的最高准确度是100%。我们的研究工作的新颖性在于,与现有方法相比,即使该面额被遮挡或完全缺失,该方法也能够成功地对钞票进行分类。

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