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PREDICTING WHEAT APHID USING 2-DIMENSIONAL FEATURE SPACE BASED ON MULTI-TEMPORAL LANDSAT TM

机译:使用基于多时间Landsat TM的二维特征空间预测小麦蚜虫

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Aphid (Hemiptera: Aphididae) outbreaks appear in wheat (Triticum aestivum L.) planting area in China, and had significant economic impacts on wheat. It has severe impact on both winter wheat yield and grain quality. The aim of this study was to monitor and predict of wheat aphid by analyzing the relationship between land surface temperature (LST), modified normalized difference water index (MNDWI) and the occurrence and prevalence of aphid in wheat. The results showed that LST was an important driving factor for occurrence of aphid, and MNDWI was sensitive to aphid damage degree. Meanwhile, a 2dimensional feature space was established based on LST and MNDWI derived from Landsat TM images, and discrimination model of aphid damage degrees was established according to the distribution of samples in the feature space. It was verified that the overall accuracy of discrimination model is 82.5%, and kappa accuracy is 73.88%.
机译:蚜虫(Hemiptera:蚜虫)爆发出现在中国的小麦(Triticum aestivum L.)种植区,对小麦产生了重大的经济影响。它对冬小麦产量和粮食质量产生严重影响。本研究的目的是通过分析土地表面温度(LST),改性归一化差异水指数(MNDWI)与小麦蚜虫的发生和患病率的关系来监测和预测小麦蚜虫。结果表明,LST是蚜虫发生的重要驱动因素,MNDWI对蚜虫损伤程度敏感。同时,基于来自Landsat TM图像的LST和MNDWI建立了2dimensional特征空间,并且根据特征空间中的样本的分布建立了蚜虫损伤程度的辨别模型。验证了歧视模型的整体准确性为82.5%,kappa准确度为73.88%。

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