Design of an Ensemble Segmentation, Feature Processing & Classification model for identification of Cotton Fungal diseases

Sandhya N. Dhage, Vijay Kumar Garg
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Abstract

Cotton fungal diseases include rust, alternaria leaf spot, fusarium wilt, grew mildew, and root rots. Identification of these diseases requires design of efficient fungi segmentation, feature representation & classification models. Existing methods that perform these tasks, are highly complex, and require disease-specific segmentation techniques, which limits their scalability levels. Moreover, low-complexity models are generally observed to showcase low accuracy levels, which restricts their applicability for real-time use cases. To overcome these issues, proposed design focused on a novel ensemble segmentation, feature processing & classification model for identification of cotton fungi diseases. The proposed model initially uses a combination of Fuzzy C Means (FCM), Enhanced FCM, KFCM, and saliency maps in order to extract Regions of Interest (RoIs). These RoIs are post-processed via a light-weight colour-feature based disease category identification layer, which assists in selecting the segmented image sets. These image sets are processed via an ensemble feature representation layer, which combines Colour Maps, Edge Maps, Gabor Maps and Convolutional feature sets. Due to evaluation of multiple feature sets, the model is able to improve classification performance for multiple disease types. Extracted features are classified via use of an ensemble classification model that combines Naïve Bayes (NB), Support Vector Machines (SVMs), Logistic Regression (LR), and Multilayer Perceptron (MLP) based classifiers. Due to this combination of segmentation, feature representation & classification models, the proposed Model is capable of improving classification accuracy by 5.9%, precision by 4.5%, recall by 3.8%, and delay by 8.5% when compared with state-of-the-art models, which makes it useful for real-time disease detection of crops.
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棉花真菌病害识别的集成分割、特征处理与分类模型设计
棉花真菌病包括锈病、叶斑病、枯萎病、霉变病和根腐病。识别这些疾病需要设计有效的真菌分割、特征表示和分类模型。执行这些任务的现有方法非常复杂,并且需要特定疾病的分割技术,这限制了它们的可扩展性水平。此外,低复杂性模型通常显示出较低的精度水平,这限制了它们对实时用例的适用性。为了克服这些问题,提出了一种新的棉花真菌病害识别集成分割、特征处理和分类模型。提出的模型最初使用模糊C均值(FCM)、增强FCM、KFCM和显著性图的组合来提取感兴趣区域(roi)。这些roi通过一个轻量级的基于颜色特征的疾病类别识别层进行后处理,该层有助于选择分割的图像集。这些图像集通过集成特征表示层进行处理,该层结合了颜色地图、边缘地图、Gabor地图和卷积特征集。由于对多个特征集进行评估,该模型能够提高对多种疾病类型的分类性能。提取的特征通过使用集成分类模型进行分类,该模型结合了Naïve贝叶斯(NB)、支持向量机(svm)、逻辑回归(LR)和基于多层感知器(MLP)的分类器。由于该模型结合了分割、特征表示和分类模型,与现有模型相比,该模型的分类准确率提高了5.9%,精度提高了4.5%,召回率提高了3.8%,延迟提高了8.5%,可用于农作物病害的实时检测。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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