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Mapping impervious surfaces with the integrated use of Landsat Thematic Mapper and radar data: a case study in an urban-rural landscape in the Brazilian Amazon.

机译:结合使用Landsat专题测绘器和雷达数据来绘制不透水的表面:以巴西亚马逊河的城乡景观为例。

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摘要

This research explored the integrated use of Landsat Thematic Mapper (TM) and radar (i.e., ALOS PALSAR L-band and RADARSAT-2 C-band) data for mapping impervious surface distribution to examine the roles of radar data with different spatial resolutions and wavelengths. The wavelet-merging technique was used to merge TM and radar data to generate a new dataset. A constrained least-squares solution was used to unmix TM multispectral data and multisensor fusion images to four fraction images (high-albedo, low-albedo, vegetation, and soil). The impervious surface image was then extracted from the high-albedo and low-albedo fraction images. QuickBird imagery was used to develop an impervious surface image for use as reference data to evaluate the results from TM and fusion images. This research indicated that increasing spatial resolution by multisensor fusion improved spatial patterns of impervious surface distribution, but cannot significantly improve the statistical area accuracy. This research also indicated that the fusion image with 10-m spatial resolution was suitable for mapping impervious surface spatial distribution, but TM multispectral image with 30 m was too coarse in a complex urban?rural landscape. On the other hand, this research showed that no significant difference in improving impervious surface mapping performance by using either PALSAR L-band or RADARSAT C-band data with the same spatial resolution when they were used for multi-sensor fusion with the wavelet-based method.
机译:这项研究探索了结合使用Landsat Thematic Mapper(TM)和雷达(即ALOS PALSAR L波段和RADARSAT-2 C波段)数据绘制不透水的表面分布,以检验不同空间分辨率和波长的雷达数据的作用。小波合并技术用于合并TM和雷达数据以生成新的数据集。约束最小二乘解用于将TM多光谱数据和多传感器融合图像分解为四个分数图像(高反照率,低反照率,植被和土壤)。然后从高反照率和低反照率分数图像中提取不透水的表面图像。 QuickBird影像用于显影不透水的表面图像,以用作参考数据以评估TM和融合图像的结果。这项研究表明,通过多传感器融合提高空间分辨率可以改善不透水表面分布的空间模式,但不能显着提高统计区域的准确性。该研究还表明,具有10 m的空间分辨率的融合图像适合于绘制不透水的表面空间分布,但是30 m的TM多光谱图像在复杂的城市农村景观中过于粗糙。另一方面,这项研究表明,当将PALSAR L波段或RADARSAT C波段数据与具有相同小波分辨率的多传感器融合一起使用时,通过使用具有相同空间分辨率的PALSAR L波段或RADARSAT C波段数据来改善不透水表面测绘性能没有显着差异方法。

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