首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Large-scale mapping of boreal forest in SIBERIA using ERS tandem coherence and JERS backscatter data
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Large-scale mapping of boreal forest in SIBERIA using ERS tandem coherence and JERS backscatter data

机译:使用ERS串联相干性和JERS反向散射数据对SIBERIA的北方森林进行大规模制图

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摘要

Siberia's boreal forests represent an economically and ecologically precious resource, a significant part of which is not monitored on a regular basis. Synthetic aperture radars (SARs), with their sensitivity to forest biomass, offer mapping capabilities that could provide valuable up-to-date information, for example about fire damage or logging activity. The European Commission SIBERIA project had the aim of mapping an area of approximately 1 million km(2) in Siberia using SAR data from two satellite sources: the tandem mission of the European Remote Sensing Satellites ERS-1/2 and the Japanese Earth Resource Satellite JERS-1. Mosaics of ERS tandem interferometric coherence and JERS backscattering coefficient show the wealth of information contained in these data but they also show large differences in radar response between neighbouring images. To create one homogeneous forest map, adaptive methods which are able to account for brightness changes due to environmental effects were required. In this paper an adaptive empirical model to determine growing stock volume classes using the ERS tandem coherence and the JERS backscatter data is described. For growing stock volume classes up to 80 m(3)/ha, accuracies of over 80% are achieved for over a hundred ERS frames at a spatial resolution of 50 m. (C) 2003 Elsevier Science Inc. All rights reserved. [References: 48]
机译:西伯利亚的北方森林是一种经济和生态上宝贵的资源,其中很大一部分没有定期监测。合成孔径雷达(SAR)具有对森林生物量的敏感性,可提供制图功能,可提供有价值的最新信息,例如有关火灾或伐木活动的信息。欧洲委员会SIBERIA项目的目的是使用来自两个卫星源的SAR数据绘制西伯利亚地区约100万公里(2)的地图:欧洲遥感卫星ERS-1 / 2和日本地球资源卫星的串联任务JERS-1。 ERS串联干涉相干性和JERS后向散射系数的马赛克显示了这些数据中包含的大量信息,但它们在相邻图像之间的雷达响应中也显示出很大差异。为了创建一张均匀的森林图,需要能够说明由于环境影响而导致的亮度变化的自适应方法。在本文中,描述了使用ERS串联相关性和JERS反向散射数据确定生长种群数量类别的自适应经验模型。对于高达80 m(3)/ ha的不断增长的种群数量类别,在50 m的空间分辨率下,对于一百多个ERS帧,可实现80%以上的精度。 (C)2003 Elsevier Science Inc.保留所有权利。 [参考:48]

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