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Accuracy Assessment of Polarimetric SAR Land Cover Classification for Boreal Regions with Moderate Topography

机译:高级地形北方地区北极地区北极地区的准确性评估

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摘要

The recent availability of dual- and quad-pol SAR imagery now permits serious investigation into using polarimetry for land cover classification. The advantage of this approach is the ability to understand the scattering mechanisms of the target. However, the unique geometry of SAR also presents challenges in the form of variable radiometry and geometric distortions based on the local topography. In this investigation, we utilize the quad-pol imagery of ALOS PALSAR to investigate techniques for classifying land cover in interior Alaska. The region is characterized by low intensity urban development and a boreal environment consisting of black spruce, birch, herbaceous cover, and wetlands. Much of the interior is characterized by rolling hills that present challenges via a highly variable radar backscatter. In response, two techniques are investigated: span normalization and normalization with radiometry derived from a Digital Elevation Model (DEM). A modified form of an unsupervised Wishart classifier is used to investigate the impact of these topographic normalizations. The land classes are compared with the National Land Cover Database 2001 in order to assess classification accuracy for each of the classification techniques. User and producer accuracies are analyzed in order to identify the optimal classification technique for boreal environments.
机译:近期可用性的双和四极SAR图像现在允许严重调查使用Polarimetry进行土地覆盖分类。这种方法的优点是能够理解目标的散射机制。然而,SAR的独特几何形状也呈现了基于本地地形的可变辐射测定和几何失真形式的挑战。在这次调查中,我们利用了Alos Palsar的四极状图像来调查用于在内部阿拉斯加内部进行分类的技术。该地区的特点是强度城市开发低强度和北方环境,包括黑云杉,桦树,草本覆盖和湿地。大部分内部的特征在于通过高度可变的雷达反向散射来表征滚动丘陵。作为响应,研究了两种技术:跨度归一化和归一化与源自数字高度模型(DEM)的辐射测定。无监督的无人驾驶愿望分类器的修改形式用于调查这些地形常规态度的影响。将土地课程与国家土地覆盖数据库2001进行比较,以评估每个分类技术的分类准确性。分析了用户和生产者的准确性,以确定北方环境的最佳分类技术。

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