Deep hybrid classification model for leaf disease classification of underground crops

R. Salini, G. Charlyn Pushpa Latha, Rashmita Khilar
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Abstract

Underground crop leave disease classification is the most significant area in the agriculture sector as they are the significant source of carbohydrates for human food. However, a disease-ridden plant could threaten the availability of food for millions of people. Researchers tried to use computer vision (CV) to develop an image classification algorithm that might warn farmers by clicking the images of plant’s leaves to find if the crop is diseased or not. This work develops anew DHCLDC model for underground crop leave disease classification that considers the plants like cassava, potato and groundnut. Here, preprocessing is done by employing median filter, followed by segmentation using Improved U-net (U-Net with nested convolutional block). Further, the features extracted comprise of color features, shape features and improved multi text on (MT) features. Finally, Hybrid classifier (HC) model is developed for DHCLDC, which comprised CNN and LSTM models. The outputs from HC(CNN + LSTM) are then given for improved score level fusion (SLF) from which final detected e are attained. Finally, simulations are done with 3 datasets to show the betterment of HC (CNN + LSTM) based DHCLDC model. The specificity of HC (CNN + LSTM) is high, at 95.41, compared to DBN, NN, RF, KNN, CNN, LSTM, DCNN, and SVM.
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用于地下作物叶病分类的深度混合分类模型
地下作物病害分类是农业部门最重要的领域,因为它们是人类食物碳水化合物的重要来源。然而,病虫害植物可能会威胁到数百万人的食物供应。研究人员试图利用计算机视觉(CV)开发一种图像分类算法,通过点击植物叶子的图像来发现作物是否生病,从而向农民发出警告。这项工作开发了一种新的 DHCLDC 模型,用于地下作物叶片疾病分类,考虑到了木薯、马铃薯和花生等植物。在这里,通过使用中值滤波器进行预处理,然后使用改进型 U-网络(具有嵌套卷积块的 U-网络)进行分割。此外,提取的特征包括颜色特征、形状特征和改进的多文本特征(MT)。最后,为 DHCLDC 开发了混合分类器(HC)模型,其中包括 CNN 和 LSTM 模型。混合分类器(CNN + LSTM)的输出结果将被用于改进的分数级融合(SLF),从而获得最终检测到的数据。最后,利用 3 个数据集进行了模拟,以显示基于 HC(CNN + LSTM)的 DHCLDC 模型的改进效果。与 DBN、NN、RF、KNN、CNN、LSTM、DCNN 和 SVM 相比,HC(CNN + LSTM)的特异性高达 95.41。
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