Detection and Classification of Rice Diseases: An Automated Approach Using Textural Features

Komal Bashir, M. Rehman, Mehwish Bari
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引用次数: 37

Abstract

Image processing techniques are widely used for the detection and classification of diseases for various plants. The structure of the plant and appearance of the disease on the plant pose a challenge for image processing. This research implements SVM (Support Vector Machine) based image-processing approach to analyze and classify three of the rice crop diseases. The process consists of two phases, i.e. training phase and disease prediction phase. The approach identifies disease on the leaf using trained classifier. The proposed research work optimizes SVM parameters (gamma, nu) for maximum efficiency. The results show that the proposed approach achieved 94.16% accuracy with 5.83% misclassification rate, 91.6% recall rate and 90.9% precision. These findings were compared with image processing techniques discussed in review of literature. The results of comparison conclude that the proposed methodology yields high accuracy percentage as compared to the other techniques. The results obtained can help the development of an effective software solution by incorporating image processing and collaboration features. This may facilitate the farmers and other bodies in effective decision making to efficiently protect the rice crops from substantial damage. While considering the findings of this research, the presented technique may be considered as a potential solution for adding image processing techniques to KM (Knowledge Management) systems.
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水稻病害检测与分类:一种基于纹理特征的自动化方法
图像处理技术广泛应用于各种植物病害的检测和分类。植物的结构和病害在植物上的表现对图像处理提出了挑战。本研究采用基于支持向量机(SVM)的图像处理方法对三种水稻作物病害进行分析和分类。该过程包括两个阶段,即训练阶段和疾病预测阶段。该方法使用训练好的分类器识别叶片上的疾病。提出的研究工作优化支持向量机参数(γ, nu),以获得最大的效率。结果表明,该方法准确率为94.16%,分类错误率为5.83%,召回率为91.6%,准确率为90.9%。这些发现与文献综述中讨论的图像处理技术进行了比较。对比结果表明,与其他方法相比,所提出的方法具有较高的准确率。所获得的结果可以通过结合图像处理和协作特性来帮助开发有效的软件解决方案。这可能有助于农民和其他机构进行有效的决策,以有效地保护水稻作物免受实质性损害。考虑到本研究的发现,所提出的技术可能被认为是在知识管理系统中添加图像处理技术的潜在解决方案。
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