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Recognizing Banknote Fitness with a Visible Light One Dimensional Line Image Sensor

机译:用可见光一维线图像传感器识别钞票的适合度

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In general, dirty banknotes that have creases or soiled surfaces should be replaced by new banknotes, whereas clean banknotes should be recirculated. Therefore, the accurate classification of banknote fitness when sorting paper currency is an important and challenging task. Most previous research has focused on sensors that used visible, infrared, and ultraviolet light. Furthermore, there was little previous research on the fitness classification for Indian paper currency. Therefore, we propose a new method for classifying the fitness of Indian banknotes, with a one-dimensional line image sensor that uses only visible light. The fitness of banknotes is usually determined by various factors such as soiling, creases, and tears, etc. although we just consider banknote soiling in our research. This research is novel in the following four ways: first, there has been little research conducted on fitness classification for the Indian Rupee using visible-light images. Second, the classification is conducted based on the features extracted from the regions of interest (ROIs), which contain little texture. Third, 1-level discrete wavelet transformation (DWT) is used to extract the features for discriminating between fit and unfit banknotes. Fourth, the optimal DWT features that represent the fitness and unfitness of banknotes are selected based on linear regression analysis with ground-truth data measured by densitometer. In addition, the selected features are used as the inputs to a support vector machine (SVM) for the final classification of banknote fitness. Experimental results showed that our method outperforms other methods.
机译:通常,应将有褶皱或表面变脏的脏钞票更换为新钞票,而应将干净钞票再循环。因此,在对纸币进行分类时对钞票健康度进行准确分类是一项重要而具有挑战性的任务。以前的大多数研究都集中在使用可见光,红外线和紫外线的传感器上。此外,以前很少有关于印度纸币适合度分类的研究。因此,我们提出了一种使用仅使用可见光的一维线图像传感器对印度钞票的适合度进行分类的新方法。尽管我们在研究中只考虑了钞票的脏污情况,但钞票的适合度通常取决于各种因素,例如脏污,折痕和眼泪等。这项研究在以下四个方面是新颖的:首先,很少有关于使用可见光图像对印度卢比进行健身分类的研究。其次,基于从兴趣区域(ROI)提取的特征进行的分类,这些特征包含很少的纹理。第三,使用1级离散小波变换(DWT)提取特征以区分合格和不合格钞票。第四,基于线性回归分析和由密度计测得的真实数据,选择代表钞票适合度和不良度的最佳DWT特征。此外,所选特征还用作支持向量机(SVM)的输入,用于钞票适应性的最终分类。实验结果表明,我们的方法优于其他方法。

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