利用图像处理技术进行植物病害分类

Shahrul Fazly Man, Shafie Omar, Muhammad Imran Ahmad, Wan Mohd Faizal, Wan Nik, Tan Shie Chow, Mohd Nazri, Abu Bakar, Fadhilnor Abdullah, Asbhir Yuusuf
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引用次数: 0

摘要

农业在我国经济中仍然举足轻重,在创收方面发挥着核心作用。病虫害、植物疾病和不断变化的气候模式等挑战对作物产量和生产构成威胁。为应对这些挑战,及时准确地检测植物病害势在必行。然而,人工检测仍然是资源密集型的,而且往往滞后。针对这一差距,本项目提出了一种基于图像处理的创新系统,用于快速检测植物病害。该系统通过分析植物叶片的图像,并将其与经过整理的数据集进行对比,从而熟练地识别出特定的病害。本研究的重点是三种主要病害:细菌性枯萎病(准确率为 98.6%)、Alternaria Alternata(98.5714%)和 Cercospora Leaf Spot(97.5%)。这些令人信服的结果凸显了该系统快速有效地对病害进行分类的能力,为单一作物种植的农民提供了一个不可或缺的工具,使他们能够迅速获得针对具体病害的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant Disease Classification Using Image Processing Technique
Agriculture remains pivotal to our economy, with farming playing a central role in revenue generation. Challenges such as pests, plant diseases, and evolving climate patterns pose threats to crop yield and production. Addressing these challenges, timely and accurate detection of plant diseases emerges as imperative. Manual detection, however, remains resource-intensive and often lags. Addressing this gap, this project proposes an innovative image processing-based system for rapidly detecting plant diseases. The system proficiently identifies specific diseases by analyzing images of plant leaves against a curated dataset. The emphasis of this study was on three major diseases: Bacterial Blight (with an accuracy of 98.6%), Alternaria Alternata (98.5714%), and Cercospora Leaf Spot (97.5%). The compelling results underline the system's capacity to swiftly and effectively categorize diseases, offering monoculture farmers an indispensable tool for obtaining prompt, disease-specific insights.
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