使用模糊逻辑加权特定 (FLWS) 算法检测伪钞的马来西亚纸币阅读器

Turki Khaled Al-Hila, Wai Kit Wong, Thu Soe Min, E. K. Wong, M. S
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引用次数: 0

摘要

为了识别马来西亚假钞,本研究建议在图像处理技术中采用一种革命性的模糊逻辑加权特定(FLWS)方法。FLWS 算法的优点是模型更精确,因为它是一种人为指导的学习算法,需要通过培训才能获得每个防伪特征的精确权重。试验结果还表明,在检测马来西亚伪钞方面,FLWS 模型优于并行模糊逻辑加权平均(FLWA)算法、MobileNet 模型和 VGG16 模型。该模型采用了众所周知的水印特征,并分配了特定权重,还采用了众所周知的机器学习技术来区分真正的马来西亚钞票和伪造的马来西亚钞票,因此与早期或当前的钞票伪造检测技术相比具有明显优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Malaysian Banknote Reader Featuring Counterfeit Detection Using Fuzzy Logic Weighted Specific (FLWS) Algorithm
To identify fake Malaysian banknotes, this research suggested a revolutionary fuzzy logic weighted specific (FLWS) approach in image processing techniques. The FLWS Algorithm has the benefit of a more accurate model because it is a human guidance learning algorithm that demands training to obtain the precise weights for each security feature. The trial outcomes also demonstrated that, for the purpose of detecting counterfeit Malaysian banknotes, the FLWS model outperformed the parallel fuzzy logic weighted averaging (FLWA) algorithm, MobileNet model, and VGG16 model. Its adoption of well-known watermark features, with specific weights assigned, and well-known machine learning techniques to distinguish between genuine Malaysian banknotes and counterfeit Malaysian banknotes gives it a clear advantage over earlier or current banknote counterfeit detection techniques.
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