Model for Identification and Prediction of Leaf Patterns: Preliminary Study for Improvement

A. Muzakir, U. Ependi
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引用次数: 3

Abstract

Purpose: Many studies have conducted studies related to automation for image-based plant species identification recently. Types of plants, in general, can be identified by looking at the shape of the leaves, colors, stems, flowers, and others. Not everyone can immediately recognize the types of plants scattered around the environment. In Indonesia, herbal plants thrive and are abundantly found and used as a concoction of traditional medicine known for its medicinal properties from generation to generation. In the current Z-generation era, children lack an understanding of the types of plants that benefit life. This study identifies and predicts the pattern of the leaf shape of herbal plants. Methods: The dataset used in this study used 15 types of herbal plants with 30 leaf data for each plant to obtain 450 data used. The extraction process uses the GLCM algorithm, and classification uses the K-NN algorithm. Result: The results carried out through the testing process in this study showed that the accuracy rate of the leaf pattern prediction process was 74% of the total 15 types of plants used. Value: Process of identifying and predicting leaf patterns of herbal plants can be applied using the K-NN classification algorithm combined with GLCM with the level of accuracy obtained.
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叶型鉴定与预测模型:改进的初步研究
目的:近年来,许多研究对基于图像的植物物种识别自动化进行了研究。一般来说,植物的类型可以通过观察叶子、颜色、茎、花等的形状来识别。并不是每个人都能立即识别出散布在环境中的植物类型。在印度尼西亚,草药植物茁壮成长,被大量发现并用作传统药物的混合物,以其代代相传的药用特性而闻名。在当前的Z世代时代,孩子们对有益于生命的植物类型缺乏了解。这项研究确定并预测了草药植物的叶片形状模式。方法:本研究中使用的数据集使用了15种草药植物,每种植物有30个叶片数据,以获得450个数据。提取过程使用GLCM算法,分类使用K-NN算法。结果:通过本研究中的测试过程进行的结果表明,叶型预测过程的准确率在所使用的15种植物中为74%。价值:使用K-NN分类算法结合GLCM可以应用识别和预测草本植物叶片模式的过程,并获得一定的准确度。
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发文量
13
审稿时长
24 weeks
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