尼日利亚纸币分类的颜色直方图匹配方法。

IF 0.7 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Jordan Journal of Electrical Engineering Pub Date : 2023-01-01 DOI:10.5455/jjee.204-1660326012
I. Omeiza, O. Ogunbiyi, O. Ogundepo, Abdulrahaman Okino Otuoze, D. Egbune, K. Osunsanya
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引用次数: 0

摘要

本文提出了一种新的尼日利亚纸币分类算法,即200、500和1000奈拉(N)面额。这项工作考察了仅使用颜色直方图来区分三种尼日利亚纸币的类别或面额的有效性。纸币的恒生指数成分图像的直方图的桶高被用作特征,而基于规则的分类器被设计用来利用直方图模式的变化或变化来将纸币分类到正确的面额类别。与其他作者在基于内容的图像检索系统中用于颜色索引的直方图比较中使用的现有的过于严格的度量相反,该算法涉及到一种简单有效的比较策略的利用。在300个样本的测试数据集上,该算法的平均分类准确率为98.66%,对于N=200、N=500和N=1000面额的分类准确率分别为100%、99%和97%。该算法不需要对纸币图像进行大量预处理,实现速度快。
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A Method of Colour-Histogram Matching for Nigerian Paper Currency Notes Classification.
In this paper a new algorithm for classification of three Nigerian paper currency notes, namely 200, 500, and 1000 Naira (N) denominations is presented. The work examines the effectiveness of using only colour histograms to differentiate between the classes or denominations of the three Nigerian paper currency notes. The bin-heights of the histograms of the HSI component images for the paper currencies are used as features while a rule-based classifier designed to take advantage of the changes or variations in the histogram patterns is used to classify the paper currencies into the right denomination class. The algorithm involves the utilization of a simple and effective comparison strategy as opposed to the existing, too-rigid metrics for histogram-comparison used by other authors for color indexing in content-based image retrieval systems. Over a testing data-set of 300 samples, the algorithm achieved an average classification accuracy of 98.66%, and classification accuracies of 100%, 99% and 97% for the N=200, N=500 and N=1000 denominations, respectively. The proposed algorithm does not require extensive preprocessing of the paper-currency images and as such is fast in implementation.
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0.20
自引率
14.30%
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