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Design an efficient disease monitoring system for paddy leaves based on big data mining

机译:基于大数据挖掘设计稻田稻田有效疾病监测系统

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With the progressions in Information and Communication Technology (ICT), the innumerable electronic 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 and classification 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.
机译:随着信息和通信技术(ICT)的级数,无数的电子设备(如智能传感器)和一些软件应用程序可以毫无顾忌到处于监控设备存在的挑战显着的贡献。在现有工作,监测系统(DMS)疾病的分割精度和分类精度,低。因此,该系统不能正常监测植物病害。为了克服这些缺点,本文提出了一种基于大数据挖掘水稻的叶子高效的监控系统。该模型包括5个阶段:1)图像采集,2)分割,3)特征提取,4)用5沿着特征选择)分类验证。首先,考虑将其作为数据集作为输入的稻谷叶图像。然后,执行图像采集阶段,其中3个步骤喜欢,i)的蜕变RGB图像灰度图像,ⅱ)标准化为高强度,以及iii)预处理利用阿尔法修整平均滤波器(ATMF),通过该噪声被消除和它的性质是平均的混合动力车以及中值滤波器,被执行。接着,段使用模糊C-均值(即,FCM)聚类算法所得到的图像。 FCM段在水稻叶病变部位。在下一阶段,特征勒索,然后将所得的特征,通过利用多诗歌优化(MVO)算法选择。完成特征选择后,所选择的特征分类利用ANFIS(自适应神经模糊推理系统)。与前SVM分类器(支持向量机),并在相对于精度,召回,F值,灵敏度的精度,和特异性的普遍方法对比经验结果。在精度等级,所提出的一个具有97.28%,但当时的技术只提供了SVM分类91.2%,为KNN 85.3%和88.78 ANN%。因此,该建议的DMS具有比其他方法更精确的检测和分类过程。所提出的DMS与现行方法对比时evinces更好的精度。

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