基于自组织图和K-Means聚类算法的高维生素C水果分类

Nuke L Chusna, Nurhasan Nugroho, Umbar Riyanto, Ahmad Ari Aldino
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引用次数: 0

摘要

富含维生素c的水果不仅味道新鲜美味,而且有可能增加身体对各种疾病的抵抗力,保持适当的营养平衡。关于富含维生素C的水果的信息是非常重要的,以便增加公众对哪些水果含有高水平维生素C的知识。然而,为了根据水果的图像对富含维生素C的水果进行分类,需要一个能够分析水果图像中存在的特征的模型。本研究的目的是结合自组织图(Self-Organizing Map, SOM)人工神经网络算法和K-Means聚类,建立高维生素C水果的分类模型。在分类之前,使用K-Means聚类算法进行图像分割过程,该算法将图像分成具有相似视觉特征的部分。分割后的图像,基于形状和纹理提取目标的特征。在获得图像的特征后,使用SOM算法将多维数据映射到较低维的空间表示中,从而对图像进行分类,从而获得相应的组或类。所建模型的精度测试结果为93.33%,属于良好类别
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Fruits High in Vitamin C Using Self-Organizing Map and the K-Means Clustering Algorithm
Vitamin C-rich fruits not only taste fresh and delicious but also have the potential to increase the body's resistance to various diseases and maintain a proper nutritional balance. Information about fruits high in vitamin C is very important in order to increase public knowledge about which fruits contain high levels of vitamin C. However, to classify fruits high in vitamin C based on their image, a model is needed that is able to analyze the characteristics present in the image of the fruit. The purpose of this study is to build a classification model for high-vitamin C fruits with a combination of the Self-Organizing Map (SOM) artificial neural network algorithm and K-Means Clustering. Prior to classification, an image segmentation process is carried out using the K-Means Clustering algorithm, which will separate the image into parts that have similar visual characteristics. After the segmented image, the features of the object are extracted based on shape and texture. After the features of the image have been obtained, proceed with classifying images using the SOM algorithm by mapping multidimensional data into a lower-dimensional spatial representation to obtain the appropriate group or class. The accuracy test results for the built model produce an accuracy value of 93.33% and are included in the good category
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