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The Formation Method of the Feature Space for the Identification of Fatigued Bills

机译:疲劳票据识别特征空间的形成方法

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Fatigued bills make a trouble such as the paper jam in a bill handling machine. In the discrimination of fatigued bills using an acoustic signal, the variation of an observed bill sound is considered to be one of causes in misclassification. Therefore a technique has demanded in order to make the classification of fatigued bills more efficient. In this paper, we proposed the algorithm that extracted feature quantity of bill sound from acoustic signal using the frequency difference, and carried out discrimination experiment of fatigued bill money by Support Vector Machine(SVM). The feature quantity of frequency difference can represent the frequency components of an acoustic signal is varied by the fatigued degree of bill money. The generalization performance of SVM does not depend on the size of dimensions of the feature space, even in a high dimensional feature space such as bill-acoustic signals. Furthermore, SVM can induce an optimal classifier which considers the combination of features by the virtue of polynomial kernel functions.
机译:疲劳的钞票会造成麻烦,例如在钞票处理机中卡纸。在使用声音信号判别疲劳的纸币时,观察到的纸币声音的变化被认为是分类错误的原因之一。因此,需要一种技术来使疲劳票据的分类更加有效。本文提出了一种利用频率差从声音信号中提取钞票声音特征量的算法,并通过支持向量机(SVM)进行了疲劳钞票识别的实验。频率差的特征量可以表示声信号的频率分量随票据的疲劳程度而变化。 SVM的泛化性能不依赖于特征空间的尺寸大小,即使在诸如钞票声信号之类的高维特征空间中也是如此。此外,SVM可以归纳出一个最优的分类器,该分类器借助多项式内核函数来考虑特征的组合。

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