基于强度矩和随机森林的水稻病害检测

Sristy Saha, S. M. M. Ahsan
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引用次数: 9

摘要

植物病害自动识别和分类方法的改进是一个不断发展的研究领域。通常,由于农民与专家之间的沟通差距,在偏远地区识别植物病害非常耗时。一个程序化的布局可以帮助农民识别水稻的病害。本文所述的自动化系统可以通过随机森林决策树分类器检测水稻叶片主要的三种病害(细菌性叶枯病、叶枯病和褐斑病)。在这里,为了正确地提取特征,需要使用张力矩。该系统的准确率为91.47%,能较好地对水稻早期病害进行分类。通过添加更多的协同特性,获得的结果可以帮助开发人员快速识别植物病害。这也将有助于农学家积极决策,保护植物免受专业伤害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rice Disease Detection using Intensity Moments and Random Forest
Improvement of an automated method for recognizing and categorizing various plant diseases is an evolving research area. Usually, it is very time-consuming to recognize plant diseases in remote areas, because of the communication gap between the farmer and the specialist. A programmed layout can help a farmer to discern rice plant diseases. The automatic system that is referred to here can detect the main three types of rice leaf diseases (Bacterial leaf blight, Leaf blast, and Brown spot) by the Random Forest decision tree classifier. I n tensity moments are needed here for extracting features properly. This proposed system obtains 91.47% accuracy and can classify rice diseases nicely in their primary stage. By adding some more collaborative features, the obtained result can assist the developer to rapidly identify plant diseases. This will also help the agriculturalists in active decision-taking for defending the plant professionally from ample harm.
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