结合MISR、ETM+和SAR数据完善土地覆被和土地利用分类,用于碳循环研究

Xue Liu, M. Kafatos, R. Gomez, S. Goetz
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引用次数: 5

摘要

准确可靠的土地覆盖和土地利用信息对碳循环和气候变化建模至关重要。虽然历史区域到全球尺度的土地覆盖和土地利用数据产品是由AVHRR和MSS/TM产生的,但自20世纪90年代后期以来,MODIS和ETM等传感器已经推进了这项任务。虽然这些数据产品的准确性和可靠性已经得到改善,但建模界的报告指出,还需要做更多的工作来减少误差,以便能够解决与全球碳循环和气候变化建模相关的不确定性。在不同波长区域,以不同的观测几何形状收集的遥感数据通常提供互补的信息。它们的组合有可能提高遥感能力,以区分重要的土地覆盖成分。本文以美国东部温带森林为研究对象,在区域空间尺度上研究了多角度数据融合、光学- sar数据融合对土地覆被分类的影响。数据来自EOS-MISR、Landsat-ETM+和RadarSat-SAR。结果表明,采用数据融合方法可显著提高土地覆盖分类精度。这些结果可能有助于未来全球变化研究的土地覆盖产品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining MISR, ETM+ and SAR data to improve land cover and land use classification for carbon cycle research
Accurate and reliable information about land cover and land use is essential to carbon cycle and climate change modeling. While historical regional-to-global scale land cover and land use data products had been produced by AVHRR and MSS/TM, this task has been advanced by sensors such as MODIS and ETM since the latter 1990s. While the accuracies and reliabilities of these data products have been improved, there have been reports from the modeling community that additional work is needed to reduce errors so that the uncertainties associated with the global carbon cycle and climate change modeling can be addressed. Remotely sensed data collected in different wavelength regions, at different viewing geometries, usually provide complementary information. Their combination has the potential to enhance remote sensing capabilities in discriminating important land cover components. In this paper, we studied multi-angle data fusion, and optical-SAR data fusion for land cover classification at regional spatial scale in the temperate forests of the eastern United States. Data from EOS-MISR, Landsat-ETM+ and RadarSat-SAR were used. The results showed significantly improved land cover classification accuracy when using the data fusion approach. These results may benefit future land cover products for global change research.
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