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Local multifractal detrended fluctuation analysis for tea breeds identification

机译:局部多重分形趋势分析法用于茶树品种鉴定

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摘要

In recent years, the popular multifractal detrended fluctuation analysis (MF-DFA) is extended to two-dimensional (2D) version, which has been applied in some field of image processing. In this paper, based on the 2D MF-DFA, a novel multifractal estimation method for images, which we called the local multifractal detrended fluctuation analysis (LMF-DFA), is proposed to recognize and distinguish 20 types of tea breeds. A set of new multifractal descriptors, namely the local multifractal fluctuation exponents is defined to portray the local scaling properties of a surface. After collecting 10 tea leaves for each breed and photographing them to standard images, the LMF-DFA method is used to extract characteristic parameters for the images. Our analysis finds that there are significant differences among the different tea breeds' characteristic parameters by analysis of variance. Both the proposed LMF-DFA exponents and another classic parameter, namely the exponent based on capacity measure method have been used as features to distinguish the 20 tea breeds. The comparison results illustrate that the LMF-DFA estimation can differentiate the tea breeds more effectively and provide more satisfactory accuracy.
机译:近年来,流行的多分形去趋势波动分析(MF-DFA)扩展到二维(2D)版本,已在图像处理的某些领域中应用。本文基于二维MF-DFA,提出了一种新的图像多重分形估计方法,称为局部多重分形去趋势波动分析(LMF-DFA),用于识别和区分20种茶树种。定义了一组新的多重分形描述符,即局部多重分形波动指数,以描绘表面的局部缩放特性。在为每个品种收集10个茶叶并将其拍摄为标准图像后,使用LMF-DFA方法提取图像的特征参数。我们的分析发现,通过方差分析,不同茶品种的特征参数之间存在显着差异。拟议的LMF-DFA指数和另一个经典参数,即基于容量测量法的指数已被用作区分20个茶品种的特征。比较结果表明,LMF-DFA估计可以更有效地区分茶树品种,并提供更令人满意的准确性。

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