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Artificial plant optimization algorithm to detect infected leaves using machine learning

机译:使用机器学习检测感染叶片的人工植物优化算法

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Plant leaves play an important role in the diagnosis of plant diseases. Losses from such diseases can have a significant economic as well as environmental impact. Thus, examination of leaves into a healthy or infected carries substantial importance. An improved artificial plant optimization (IAPO) algorithm using machine learning has been introduced that identifies the plant diseases and categorize the leaves into healthy and infected on a private dataset of 236 images. Features are extracted from the images using histogram of oriented gradients (descriptor). The concepts of artificial plant optimization are then applied to study the features of healthy leaves using IAPO. A machine learning algorithm has been created to make the model adaptive with varied datasets. The degree of infection is eventually computed, and the leaves with infection greater than a certain calculated threshold are classified as infected leaves. The results show that IAPO can be used for classification of infected and healthy leaves and this algorithm can be generalized to solve problems in other domains as well. The proposed IAPO is also compared with other classification algorithms including k-nearest neighbours, support vector machine, random forest and convolution neural network that show accuracies of 78.24%, 83.48%, 87.83%, and 91.26%, respectively, whereas IAPO shows quite accurate results in classification of leaves with an accuracy of 97.45% on training set and 95.0% accuracy on test set.
机译:植物叶在植物疾病的诊断中发挥着重要作用。这种疾病的损失可能具有重要的经济和环境影响。因此,将叶片视为健康或感染的携带实质性重要性。已经引入了一种改进的人工植物优化(IAPO)算法使用机器学习鉴定了植物疾病,并将叶子分类为健康,并感染在236个图像的私有数据集上。使用定向梯度的直方图(描述符)从图像中提取特征。然后应用人造植物优化的概念来使用IAPO研究健康叶子的特征。已经创建了一种机器学习算法,以使模型与各种数据集自适应。最终感染程度最终计算,并且感染的叶子大于某个计算的阈值的叶子被归类为感染的叶片。结果表明,IAPO可用于分类感染和健康叶片,并且可以推广该算法也可以解决其他域中的问题。拟议的IAPO也与其他分类算法相比,包括K-Collect邻居,支持向量机,随机森林和卷积神经网络,分别显示78.24%,83.48%,87.83%和91.26%的准确度,而IAPO则表现得非常准确导致叶子的分类,精度为97.45%的训练集,测试集准确度为95.0%。

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