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Exploiting growing stock volume maps for large scale forest resource assessment: Cross-comparisons of ASAR- and PALSAR-based GSV estimates with forest inventory in Central Siberia

机译:利用不断增长的蓄积量图进行大规模森林资源评估:基于ASAR和PALSAR的GSV估算值与中西伯利亚森林资源的交叉比较

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摘要

Growing stock volume is an important biophysical parameter describing the state and dynamics of the Boreal zone. Validation of growing stock volume (GSV) maps based on satellite remote sensing is challenging due to the lack of consistent ground reference data. The monitoring and assessment of the remote Russian forest resources of Siberia can only be done by integrating remote sensing techniques and interdisciplinary collaboration. In this paper, we assess the information content of GSV estimates in Central Siberian forests obtained at 25m from ALOS-PALSAR and 1km from ENVISAT-ASAR backscatter data. The estimates have been cross-compared with respect to forest inventory data showing 34% relative RMSE for the ASAR-based GSV retrievals and 39.4% for the PALSAR-based estimates of GSV. Fragmentation analyses using a MODIS-based land cover dataset revealed an increase of retrieval error with increasing fragmentation of the landscape. Cross-comparisons of multiple SAR-based GSV estimates helped to detect inconsistencies in the forest inventory data and can support an update of outdated forest inventory stands.
机译:种群数量增长是描述北方地区状态和动态的重要生物物理参数。由于缺少一致的地面参考数据,基于卫星遥感的生长种群量(GSV)图验证非常具有挑战性。西伯利亚偏远俄罗斯森林资源的监测和评估只能通过整合遥感技术和跨学科合作来完成。在本文中,我们评估了ALOS-PALSAR在25m处和ENVISAT-ASAR反向散射数据在1km处获得的西伯利亚中部森林GSV估算的信息内容。这些估计值与森林清查数据进行了交叉比较,显示基于ASAR的GSV检索的相对RMSE为34%,基于PALSAR的GSV估计为39.4%。使用基于MODIS的土地覆盖数据集进行的碎片分析显示,随着景观碎片的增加,检索误差也随之增加。多个基于SAR的GSV估计值的交叉比较有助于发现森林清单数据中的不一致之处,并且可以支持更新过时的森林清单站。

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