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Non-parametric retrieval of aboveground biomass in Siberian boreal forests with ALOS PALSAR interferometric coherence and backscatter intensity

机译:利用ALOS PALSAR干涉相干和反向散射强度非参数提取西伯利亚北方森林地上生物量。

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摘要

The main objective of this paper is to investigate the effectiveness of two recently popular non-parametric models for aboveground biomass (AGB) retrieval from Synthetic Aperture Radar (SAR) L-band backscatter intensity and coherence images. An area in Siberian boreal forests was selected for this study. The results demonstrated that relatively high estimation accuracy can be obtained at a spatial resolution of 50 m using the MaxEnt and the Random Forests machine learning algorithms. Overall, the AGB estimation errors were similar for both tested models (approximately 35 t∙ha[Subscript: −1]). The retrieval accuracy slightly increased, by approximately 1%, when the filtered backscatter intensity was used. Random Forests underestimated the AGB values, whereas MaxEnt overestimated the AGB values.
机译:本文的主要目的是研究两个最近流行的非参数模型从合成孔径雷达(SAR)L波段反向散射强度和相干图像中检索地上生物量(AGB)的有效性。这项研究选择了西伯利亚北方森林地区。结果表明,使用MaxEnt和Random Forests机器学习算法可以在50 m的空间分辨率下获得相对较高的估计精度。总体而言,两个测试模型的AGB估计误差均相似(大约35 t∙ha [下标:-1])。使用滤波后的反向散射强度时,检索精度略微提高了大约1%。随机森林低估了AGB值,而MaxEnt高估了AGB值。

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