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Moving to the RADARSAT Constellation Mission: Comparing Synthesized Compact Polarimetry and Dual Polarimetry Data with Fully Polarimetric RADARSAT-2 Data for Image Classification of Peatlands

机译:迁移到RADARSAT星座任务:比较合成紧凑型极化和双极化数据与全极化RADARSAT-2数据对泥炭地的图像分类

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For this research, the Random Forest (RF) classifier was used to evaluate the potential of simulated RADARSAT Constellation Mission (RCM) data for mapping landcover within peatlands. Alfred Bog, a large peatland complex in Southern Ontario, was used as a test case. The goal of this research was to prepare for the launch of the upcoming RCM by evaluating three simulated RCM polarizations for mapping landcover within peatlands. We examined (1) if a lower RCM noise equivalent sigma zero (NESZ) affects classification accuracy, (2) which variables are most important for classification, and (3) whether classification accuracy is affected by the use of simulated RCM data in place of the fully polarimetric RADARSAT-2. Results showed that the two RCM NESZs (?25 dB and ?19 dB) and three polarizations (compact polarimetry, HH+HV, and VV+VH) that were evaluated were all able to achieve acceptable classification accuracies when combined with optical data and a digital elevation model (DEM). Optical variables were consistently ranked to be the most important for mapping landcover within peatlands, but the inclusion of SAR variables did increase overall accuracy, indicating that a multi-sensor approach is preferred. There was no significant difference between the RF classifications which included RADARSAT-2 and simulated RCM data. Both medium- and high-resolution compact polarimetry and dual polarimetric RCM data appear to be suitable for mapping landcover within peatlands when combined with optical data and a DEM.
机译:对于这项研究,随机森林(RF)分类器用于评估模拟RADARSAT星座任务(RCM)数据在泥炭地内测绘土地覆盖物的潜力。测试用例是安大略省南部的大型泥炭地综合体Alfred Bog。这项研究的目的是通过评估三个模拟的RCM极化以绘制泥炭地内的土地覆盖图,为即将到来的RCM发射做准备。我们研究了(1)较低的RCM噪声当量总和零(NESZ)是否会影响分类精度;(2)哪些变量对于分类最重要;以及(3)使用模拟的RCM数据代替替代方法是否会影响分类精度全极化RADARSAT-2。结果表明,将两个RCM NESZ(分别为?25 dB和?19 dB)和三个极化(紧凑偏振,HH + HV和VV + VH)进行评估,当与光学数据和光学传感器结合使用时,均能够达到可接受的分类精度。数字高程模型(DEM)。光学变量一直被认为是在泥炭地内测绘土地覆盖最重要的变量,但是包含SAR变量的确提高了整体准确性,这表明多传感器方法是首选。在包括RADARSAT-2和模拟RCM数据的RF分类之间没有显着差异。与光学数据和DEM结合使用时,中高分辨率和高分辨率紧凑极化仪和双极化RCM数据似乎都适合绘制泥炭地内的土地覆盖图。

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