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Detection of Plant Leaf Diseases Using K-mean++ Intermeans Thresholding Algorithm

机译:使用k均值++中模拟阈值算法检测植物叶片疾病

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In the field of agricultural information, the plant leaf disease detection is highly important for both farmer life and environment. To improve the accuracy of plant leaf disease detection and reduce the image processing time, the improved K-mean++ clustering and intermeans thresholding method are proposed in this study. The proposed algorithms are used for training and testing diseases in plant leaf images in two different databases. Of the proposed methods, the intermeans algorithm will be selected based on different thresholding values. The optimal value of thresholding-i.e., the intermeans algorithm-will help increase the accuracy and speed of classifying diseases in plant leaf images. This method will be also used with unseen images of plant leaf. The experimental result of the detection of plant leaf diseases achieves an average detection accuracy of 98.10%. When compared with the results based on standard K-mean clustering, the current method gives better results around 23.20%. The proposed algorithm is more effective than the standard algorithms for detecting plant leaf diseases, as well as the reduction in cots in the computational power of computers.
机译:在农业信息领域,植物叶病检测对于农民生活和环境非常重要。为了提高植物叶疾病检测的准确性并降低图像处理时间,本研究提出了改进的K平均++聚类和体中的阈值阈值方法。所提出的算法用于两种不同数据库中的植物叶片图像中的培训和测试疾病。在所提出的方法中,将基于不同的阈值值来选择中继算法。阈值 - 即的最佳值,中部算法 - 将有助于提高植物叶片图像中分类疾病的准确性和速度。该方法也将与植物叶的看不见的图像一起使用。植物叶片疾病检测的实验结果实现了98.10%的平均检测精度。与基于标准K均值聚类的结果相比,目前的方法会产生较好的23.20%。该算法比检测植物叶片疾病的标准算法更有效,以及计算机的计算能力中的弧度减少。

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