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首页> 外文期刊>iForest: Biogeosciences and Forestry >Sensitivity analysis of RapidEye spectral bands and derived vegetation indices for insect defoliation detection in pure Scots pine stands
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Sensitivity analysis of RapidEye spectral bands and derived vegetation indices for insect defoliation detection in pure Scots pine stands

机译:RapidEye光谱带和导出植被指数对纯樟子松林中昆虫脱叶的敏感性分析

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Abstract: This study investigated the statistical relationship between defoliation in pine forests infested by nun moths (Lymantria monacha) and the spectral bands of the RapidEye sensor, including the derived normalized difference vegetation index (NDVI) and the normalized difference red-edge index (NDRE). The strength of the relationship between the spectral variables and the ground reference samples of percent remaining foliage (PRF) was assessed over three test years by the Spearman’s ρ correlation coefficient, revealing the following ranking order (from high to low ρ): NDRE, NDVI, red, NIR, green, blue, and red-edge. A special focus was directed at the vegetation indices. In both discriminant analyses and decision tree classification, the NDRE yielded higher classification accuracy in the defoliation classes containing none to moderate levels of defoliation, whereas the NDVI yielded higher classification accuracy in the defoliation classes representing severe or complete defoliation. We concluded that the NDRE and the NDVI respond very similarly to changes in the amount of foliage, but exhibit particular strengths at different defoliation levels. Combining the NDRE and the NDVI in one discriminant function, the average gain of overall accuracy amounted to 7.8 percentage points compared to the NDRE only, and 7.4 percentage points compared to the NDVI only. Using both vegetation indices in a machine-learning-based decision tree classifier, the overall accuracy further improved and reached 81% for the test year 2012, 71% for 2013, and 79% for the test year 2014.
机译:摘要:本研究调查了尼姑飞蛾(Lymantria monacha)侵染的松树林中的落叶与RapidEye传感器的光谱带之间的统计关系,包括导出的归一化差异植被指数(NDVI)和归一化差异红边指数(NDRE) )。在三个测试年中,通过Spearman的ρ相关系数评估了光谱变量与剩余叶子百分比(PRF)的地面参考样品之间的关系强度,揭示了以下排名顺序(从高到低ρ):NDRE,NDVI ,红色,NIR,绿色,蓝色和红边。特别关注植被指数。在判别分析和决策树分类中,NDRE在不包含中度水平落叶的落叶分类中产生较高的分类精度,而NDVI在代表严重或完全落叶的落叶分类中产生较高的分类精度。我们得出的结论是,NDRE和NDVI对树叶数量的变化非常相似,但是在不同的落叶水平下表现出特殊的强度。将NDRE和NDVI结合到一个判别函数中,与仅NDRE相比,整体准确度的平均增益为7.8个百分点,而与仅NDVI相比,则为7.4个百分点。在基于机器学习的决策树分类器中使用这两个植被指数,总体准确性进一步提高,2012年测试年达到了81%,2013年达到了71%,2014年达到了79%。

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