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Mapping vegetation types using SIR-C data

机译:使用SIR-C数据绘制植被类型图

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Supervised classification using multi-frequency, polarimetric-radar data from the NASA/JPL AIRSAR system has been most successful, with a demonstrated capability to separate many different classes of vegetation. Models of radar interaction with vegetation suggest strongly that this capability is due to radar's sensitivity to the vegetation structure in the canopy and in the trunks or stems and understory. Recently, an approach has been adopted in the radar remote sensing community to first perform an unsupervised classification on the data into simple classes, such as forest, grassland, bare soil, water, urban areas, etc. This initial classification can then be used as a starting point for a supervised classification into further subclasses. The success of classification using AIRSAR suggests that similar results can be achieved with the Spaceborne Imaging Radar SIR-C. Results obtained from the two SIR-C missions so far indicate that this is the case. A major difference between the airborne and spaceborne radar data are that the spaceborne data covers a much smaller range of incidence angles. This means that the backscatter does not vary dramatically across the swath as in the airborne case. Thus in using SIR-C data one can train on one area in an image and expect the results to be applicable all the way across the image. In this paper, results on vegetation classification using SIR-C data are presented for two sites: an agricultural site (Flevoland) in the Netherlands and a tropical rain forest area near Manaus in Brazil. Results will be compared with AIRSAR results for the Flevoland site.
机译:使用来自NASA / JPL AIRSAR系统的多频,极化雷达数据进行的监督分类是最成功的,具有分离许多不同类别植被的能力。雷达与植被的相互作用模型强烈表明,这种能力是由于雷达对冠层,树干或茎干和林下的植被结构敏感。最近,雷达遥感界已采用一种方法,首先对数据进行无监督分类,分为简单的类别,例如森林,草地,裸露的土壤,水,城市地区等。然后,可以将这种初始分类用作监督将其分类为其他子类的起点。使用AIRSAR进行分类的成功表明,星载成像雷达SIR-C可以实现类似的结果。迄今为止,两个SIR-C任务获得的结果表明情况确实如此。机载雷达数据与星载雷达数据之间的主要区别在于,星载数据覆盖的入射角范围要小得多。这意味着后向散射不会像机载情况那样在整个条带中发生巨大变化。因此,在使用SIR-C数据时,可以训练图像中的一个区域,并期望结果在整个图像中都适用。在本文中,利用SIR-C数据对两个地点的植被分类结果进行了介绍:荷兰的一个农业地点(Flevoland)和巴西的Manaus附近的热带雨林地区。将结果与Flevoland站点的AIRSAR结果进行比较。

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