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Simultaneous use of Landsat-TM and IRS-1C WiFS data in estimating large area tree stem volume and aboveground biomass

机译:同时使用Landsat-TM和IRS-1C WiFS数据估算大面积树茎和地上生物量

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摘要

A multisource and multiresolution method was developed for estimating large area tree stem volume of growing stock and aboveground biomass of trees. Combined Landsat-TM data and IRS-1C WiFS data, together with field data of National Forest Inventories (NFIs), were applied. Landsat-TM data were used as an intermediate step between the field data and WiFS pixels. A nonparametric k-nearest neighbour (k-nn) estimation method was applied with Landsat-TM data and field plot data from the Swedish National Forest Inventory (SNFI). A nonlinear regression analysis was used in deriving models for volume and biomass as a function of WiFS data. The estimates were evaluated by applying independent estimates from the Finnish Multi-source National Forest Inventory (MS-FNFI): The estimates are derived using field plots from the Finnish National Forest Inventory (FNFI) and Landsat-TM images. Mean volume as estimated from the Finnish multisource data for a study area of 447000 ha was 84.2 m{sup}3 ha{sup}-1. This compared with 87.2 m{sup}3 ha{sup}-1 as derived from the developed method presented in this paper. The corresponding estimates for aboveground tree biomass were 59.5 and 58.3 tons ha{sup}-1, respectively.
机译:开发了一种多源,多分辨率的方法来估计生长种群的大面积树茎体积和树木地上生物量。结合使用Landsat-TM数据和IRS-1C WiFS数据以及国家森林清单(NFI)的野外数据。 Landsat-TM数据被用作场数据和WiFS像素之间的中间步骤。采用瑞典国家森林清单(SNFI)的Landsat-TM数据和田间地块数据,采用非参数k最近邻(k-nn)估计方法。非线性回归分析用于推导WiFS数据的体积和生物量模型。评估是通过应用来自芬兰多源国家森林清单(MS-FNFI)的独立评估来评估的:评估是使用来自芬兰国家森林清单(FNFI)和Landsat-TM图像的田地图得出的。根据芬兰多源数据,对于447000公顷研究面积,平均体积为84.2 m {sup} 3 ha {sup} -1。与此相比,本文提出的已开发方法得出的结果为87.2 m {sup} 3 ha {sup} -1。地上树木生物量的相应估计分别为59.5吨ha {sup} -1。

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