设计一个基于大数据挖掘的高效水稻叶片病害监测系统

K. Suresh, S. Karthik, M. Hanumanthappa
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引用次数: 1

摘要

随着信息和通信技术(ICT)的发展,无数的电子设备(如智能传感器)和一些软件应用程序可以为存在于监测工厂的挑战提供显着的贡献。在目前的工作中,疾病监测系统(DMS)的分割精度和分类精度较低。所以,这个系统不能很好地监测植物病害。为了克服这些缺点,本文提出了一种基于大数据挖掘的高效水稻叶片监测系统。该模型包括5个阶段:1)图像采集,2)分割,3)特征提取,4)特征选择以及5)分类验证。首先,考虑作为数据集的稻田叶片图像作为输入。然后,执行图像采集阶段,其中有3个步骤,如:i)将RGB图像转换为灰度图像,ii)高强度归一化,以及iii)利用alpha -裁剪均值滤波器(ATMF)进行预处理,通过该滤波器消除噪声,其性质是均值滤波器和中值滤波器的混合。接下来,使用模糊c均值(即FCM)聚类算法对结果图像进行分割。流式细胞仪将水稻叶片中的患病部分分段。在第二阶段,对特征进行勒索,然后利用多宇宙优化(Multi-Verse Optimization, MVO)算法选择结果特征。完成特征选择后,利用自适应神经模糊推理系统(ANFIS)对所选特征进行分类。实验结果在精密度、召回率、f值、灵敏度、准确度和特异性等方面与之前的SVM分类器(支持向量机)和目前流行的方法进行了对比。在准确率水平上,本文方法的准确率为97.28%,而目前常用的SVM分类器准确率为91.2%,KNN分类器准确率为85.3%,ANN分类器准确率为88.78%。因此,所提出的DMS比其他方法具有更准确的检测和分类过程。与现有方法相比,该方法具有更好的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design an efficient disease monitoring system for paddy leaves based on big data mining
With the progressions in Information and Communication Technology (ICT), the innumerableelectronic devices (like smart sensors) and several software applications can proffer notable contributions to the challenges that are existent in monitoring plants. In the prevailing work, the segmentation accuracy andclassification accuracy of the Disease Monitoring System (DMS), is low. So, the system doesn't properly monitor the plant diseases. To overcome such drawbacks, this paper proposed an efficient monitoring system for paddy leaves based on big data mining. The proposed model comprises 5 phases: 1) Image acquisition, 2) segmentation, 3) Feature extraction, 4) Feature Selection along with 5) Classification Validation. Primarily, consider the paddy leaf image which is taken as of the dataset as the input. Then, execute image acquisition phase where 3 steps like, i) transmute RGB image to grey scale image, ii) Normalization for high intensity, and iii) preprocessing utilizing Alpha-trimmed mean filter (ATMF) through which the noises are eradicated and its nature is the hybrid of the mean as well as median filters, are performed. Next, segment the resulting image using Fuzzy C-Means (i.e. FCM) Clustering Algorithm. FCM segments the diseased portion in the paddy leaves. In the next phase, features are extorted, and then the resulted features are chosen by utilizing Multi-Verse Optimization (MVO) algorithm. After completing feature selection, the chosen features are classified utilizing ANFIS (Adaptive Neuro-Fuzzy Inference System). Experiential results contrasted with the former SVM classifier (Support Vector Machine) and the prevailing methods in respect of precision, recall, F-measure,sensitivity accuracy, and specificity. In accuracy level, the proposed one has 97.28% but the prevailing techniques only offer 91.2% for SVM classifier, 85.3% for KNN and 88.78% for ANN. Hence, this proposed DMS has more accurate detection and classification process than the other methods. The proposed DMS evinces better accuracy when contrasting with the prevailing methods.
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