使用带有欧氏距离的 HOG 检测辣椒疾病

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Chauhan Pareshbhai Mansangbhai, Chintan Makwana, Hardikkumar Harishbhai Maheta
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引用次数: 0

摘要

为了检测辣椒植株叶片上的植物病害,本研究采用了自动学习技术。农民种植辣椒的目的是将其出口到世界各地。辣椒是一日三餐的必需品。需要在辣椒植株叶片中发现的病害并不多。辣椒植株有三种类型:弱株、病株和健康株。病弱的辣椒植株会受到病害的影响,如刺叶、斑叶、粉虱、黄化病等。据报道,目前正在进行研究,以确定辣椒植株是安全生长还是受到污染。但在农业方面,关键是要根据受损植物的独特类型来识别。我们使用辣椒植物叶片的 HOG(定向梯度直方图)来研究各类病害。特征向量中的代表性特征向量是利用每个特征点的平均值创建的。典型特征向量和欧氏距离用于计算异常值。当欧氏距离大于 0.0025、0.0016 和 0.00125 时,平均准确率分别为 61.6%、73.2% 和 81.00%,特征向量中的修正边界点分别为 0.0016、0.00125 和 0.0009。上述结果表明,图像处理的机器学习技术可用于确定植物病害的类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chili Disease Detection Using HOG with Euclidean Distance
In order to detect plant diseases in the leaves of chili plants, automatic learning is used in this study. Farmers are planting chilies with the intention of exporting them worldwide. Chili is a need for regular meals. There aren't many illnesses that need to be found in the leaves of chili plants. There are three types of chili plants: weak, diseased, and healthy. Weak and sick chili plants can be affected by diseases such as a harsh leaf, spot leaf, whitefly, yellowish, etc. It has been reported that research is underway to determine whether chile plants are safe to grow or polluted. But when it comes to agriculture, it's critical to recognize the damaged plant by its unique type. Various category diseases are studied using the HOG (Histogram of Oriented Gradients) of the leaf of the chili plant. The representative feature vectors in the feature vector are created using the mean value of every feature point. A typical feature vector and the Euclidean distance are used to calculate the outliers. For the Euclidean distance larger than 0.0025, 0.0016, and 0.00125, the average accuracy rate was 61.6%, 73.2%, and 81.00%, respectively, with the modified border point in the feature vector being 0.0016, 0.00125, and 0.0009. The results presented above suggest that machine-learning techniques for image processing can be used to determine the type of plant disease.
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来源期刊
Journal of Electrical Systems
Journal of Electrical Systems ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.10
自引率
25.00%
发文量
0
审稿时长
10 weeks
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