首页> 外文会议>International Symposium on Remote Sensing of Environment >ESTIMATION OF BIOMASS CARBON STOCKS OVER PEAT SWAMP FORESTS USING MULTI-TEMPORAL AND MULTI-POLARIZATIONS SAR DATA
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ESTIMATION OF BIOMASS CARBON STOCKS OVER PEAT SWAMP FORESTS USING MULTI-TEMPORAL AND MULTI-POLARIZATIONS SAR DATA

机译:基于多时相和多极化SAR数据的泥炭沼泽生物量碳足迹估算

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The capability of L-band radar backscatter to penetrate through the forest canopy is useful for mapping the forest structure, including above ground biomass (AGB) estimation. Recent studies confirmed that the empirical AGB models generated from the L-band radar backscatter can provide favourable estimation results, especially if the data has dual-polarization configuration. Using dual polarimetry SAR data the backscatter signal is more sensitive to forest biomass and forest structure because of tree trunk scattering, thus showing better discriminations of different forest successional stages. These SAR approaches, however, need to be further studied for the application in tropical peatlands ecosystem We aims at estimating forest carbon stocks and stand biophysical properties using combination of multi-temporal and multi-polarizations (quad-polarimetric) L-band SAR data and focuses on tropical peat swamp forest over Kampar Peninsula at Riau Province, Sumatra, Indonesia which is one of the most peat abundant region in the country Applying radar backscattering (Sigma nought) to model the biomass we found that co-polarizations (HH and VV) band are more sensitive than cross-polarization channels (HV and VH). Individual HH polarization channel from April 2010 explained > 86% of AGB. Whereas VV polarization showed strong correlation coefficients with LAI, tree height, tree diameter and basal area. Surprisingly, polarimetric anisotropy feature from April 2007 SAR data show relatively high correlations with almost all forest biophysical parameters. Polarimetric anisotropy, which explains the ratio between the second and the first dominant scattering mechanism from a target has reduced at some extent the randomness of scattering mechanism, thus improve the predictability of this particular feature in estimating the forest properties. These results may be influenced by local seasonal variations of the forest as well as moisture, but available quad-pol SAR data were unable to show these patterns, since all the SAR data were acquired during the rainy season. The results of multi-regression analysis in predicting above ground biomass shows that ALOS PALSAR data acquired in 2010 has outperformed other time series data. This is probably due to the fact that land cover change in the area from 2007 - 2009 was highly dynamic, converting natural forests into rubber and Acacia plantations, thus SAR data of 2010 which was acquired in between of two field campaigns has provided significant results (F = 40.7, P < 0.005). In general, we found that polarimetric features have improved the models performance in estimating AGB Surprising results come from single HH polarization band from April 2010 that has a strong correlation with AGB (r = 0.863) Also, HH polarization band of 2009 SAR image resulted in a moderate correlation with AGB (r = 0.440).
机译:L波段雷达后向散射穿过森林冠层的能力对于绘制森林结构(包括地上生物量(AGB)估计值)很有用。最近的研究证实,从L波段雷达反向散射生成的经验AGB模型可以提供有利的估计结果,尤其是在数据具有双极化配置的情况下。使用双极化SAR数据,由于树干散射,背向散射信号对森林生物量和森林结构更加敏感,因此可以更好地区分不同森林演替阶段。但是,这些SAR方法需要在热带泥炭地生态系统中的应用进行进一步研究。我们旨在结合多时相和多极化(四极化)L波段SAR数据估算森林碳储量和生物物理特性。重点研究印度尼西亚苏门答腊廖内省坎帕半岛上的热带泥炭沼泽森林,这是该国最丰富的泥炭资源之一。应用雷达反向散射(Sigma nought)对生物质进行建模,我们发现共极化(HH和VV)频段比交叉极化通道(HV和VH)更敏感。自2010年4月起,各个HH极化通道解释了AGB的> 86%。而VV极化显示与LAI,树高,树径和基础面积有很强的相关系数。出乎意料的是,2007年4月SAR数据的极化各向异性特征与几乎所有森林生物物理参数都显示出较高的相关性。极化各向异性解释了来自目标的第二和第一主要散射机制之间的比率,在一定程度上降低了散射机制的随机性,因此提高了该特定特征在评估森林特性方面的可预测性。这些结果可能受到森林局部季节变化以及水分的影响,但是由于所有SAR数据都是在雨季获得的,因此可用的四极SAR数据无法显示这些模式。预测地上生物量的多元回归分析结果表明,2010年获得的ALOS PALSAR数据优于其他时间序列数据。这可能是由于以下事实:2007年至2009年该地区的土地覆被变化非常剧烈,将天然林转变为橡胶林和相思树人工林,因此在两次野战中获得的2010年SAR数据提供了重要的结果( F = 40.7,P <0.005)。总的来说,我们发现极化特征改善了模型在估计AGB方面的性能。令人惊讶的结果来自2010年4月以来的单个HH极化带,与AGB密切相关(r = 0.863)。此外,2009 SAR图像的HH极化带导致与AGB呈中等相关性(r = 0.440)。

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