用多重分形谱计算小麦样品分析

I. Murenin, N. Ampilova
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引用次数: 0

摘要

小麦图像的计算分析在农业和生产中有着广泛的应用。本文介绍了用添加剂结晶法对小麦样品图像进行分析和分类的方法。在试验中,使用3个浓度,每种浓度使用4次,这样每种小麦都用12个图像表征。我们将获得的图像用于5个类别。所有图像都具有相似的视觉特征,这使得使用统计方法进行分析变得困难。通过计算局部密度函数得到的多重分形谱作为分类特征。采用线性回归、朴素贝叶斯分类器、支持向量机、随机森林等多种机器学习方法,对5个不同样本(类)对应的60张小麦图像进行分类。在某些情况下,采用主成分法对特征空间进行降维。为了确定不同浓度下获得的小麦样品之间的关系,使用了3种不同的聚类方法。分类结果表明,以多重分形谱作为分类标志,结合随机森林方法和主成分分析方法,可以对添加物结晶得到的小麦样品进行分类,平均分类准确率最高,达到74%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Wheat Samples Using the Calculation of Multifractal Spectrum
The computational analysis of wheat images to identify wheat varieties and quality has wide applications in agriculture and production. This paper presents an approach to the analysis and classification of images of wheat samples obtained by the method of crystallization with additives. In tests 3 concentration and 4 times for each concentration were used, such that each type of wheat was characterized by 12 images. We used the images obtained for 5 classes. All the images have similar visual characteristics, that makes it difficult to use statistical methods of analysis. The multifractal spectrum obtained by calculating the local density function was used as a classifying feature. The classification was performed on a set of 60 wheat images corresponding to 5 different samples (classes) by various machine learning methods such as linear regression, naive Bayesian classifier, support vector machine, and random forest. In some cases, to reduce the dimension of the feature space the method of principal components was applied. To identify the relationships between wheat samples obtained at different concentrations, 3 different clustering methods were used. The classification results showed that the multifractal spectrum as classifying sign and using the random forest method in combination with the principal component analysis allow identifying wheat samples obtained by crystallization with additives, being the highest average classi- fication accuracy is 74 %.
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