基于遥感和机器学习的褐飞虱损伤检测

D. Lakmal, Kumaran Kugathasan, V. Nanayakkara, S. Jayasena, Amal Perera, Lasantha Fernando
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引用次数: 5

摘要

每年,由于病虫害,水稻种植者损失了大量的作物产量。褐飞虱(BPH)是水稻种植中最常见的病害之一。由于缺乏准确和及时的数据,斯里兰卡政府正在努力对褐飞虱的流行率做出适当的估计。为了解决这一问题,本研究提出了一种基于光学和合成孔径雷达遥感数据的机器学习方法。然而,以前没有在野外条件下使用机器学习和卫星遥感数据来检测布朗飞虱的攻击。本研究分为两个阶段。第一阶段采用基于SAR影像的时间序列分类方法对耕地进行识别。第二阶段使用光学卫星图像的比值和标准差分指数来识别水田中受BPH影响的区域。第一阶段使用的卷积神经网络对水稻种植区域的识别准确率为96.20%。第二阶段使用支持向量机检测被BPH攻击破坏的区域。第一阶段和第二阶段相结合的方法检测Brown planth飞虱攻击的准确率达到96.31%。
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Brown Planthopper Damage Detection using Remote Sensing and Machine Learning
Every year paddy cultivators lose a significant amount of crop yield due to diseases and pests. Brown Planthopper (BPH) is one of the most common diseases that affect paddy cultivation. Sri Lankan government is struggling to make appropriate estimations regarding Brown Planthopper prevalence due to the absence of accurate and timely data. To solve this issue, a machine learning approach is proposed based on optical and synthetic aperture radar remote sensing data in this study. However, there is no previous effort for detecting Brown Planthopper attacks using machine learning and satellite remote sensing data under field conditions. This study consists of two phases. A time series classification based on SAR imagery is implemented to identify cultivated paddy fields in the first phase. Ratio and standard difference indices derived from optical satellite images are used in the second phase to identify regions affected by BPH attacks in paddy fields. Convolution neural network that is used in the first phase reports an accuracy of 96.20% for identifying cultivated paddy regions. A Support Vector Machine is used to detect areas damaged by BPH attacks in the second phase. The Combined approach of the first and the second phases shows promising results with an accuracy of 96.31% for detecting Brown Planthopper attacks.
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