首页> 外文会议>2012 IEEE International Geoscience amp; Remote Sensing Symposium. >Mapping forest stands using RADARSAT-2 quad-polarization SAR images: A combination of polarimetric and spatial information
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Mapping forest stands using RADARSAT-2 quad-polarization SAR images: A combination of polarimetric and spatial information

机译:使用RADARSAT-2四极化SAR图像对林分进行制图:极化和空间信息的结合

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This study proposes an approach which simultaneously uses spatial information and polarimetric data from a RADARSAT-2 quad-polarization satellite image for forest tree species classification. The study area is near the Gounamitz River located in northwestern New Brunswick (Canada). After geometric correction of the image, two statistical models were used for the classification: (1) a Markov random fields model based on an initial segmentation provided by the K-means algorithm to account for the spatial statistical dependencies between adjacent sites; and (2) a K-distribution model with, as parameters, the covariance matrix containing all of the polarimetric information. The classification was optimized using the stochastic simulated annealing algorithm. Validation of the results was performed by comparison with field inventory measurements. Variation of the backscattering coefficient c° obtained for the RADARSAT-2 quad-polarization SAR image with incidence angles of 26 0 and 45 ° ranged from 1 and 3 dB for the different tree species. The results of average and overall accuracies of the classification were respectively 77.13% and 72.35% for the 26° incidence angle image compared to 81.47% and 79.12% for the 45°incidence angle.
机译:这项研究提出了一种方法,该方法同时使用来自RADARSAT-2四极化卫星图像的空间信息和极化数据进行林木树种分类。研究区域靠近位于新不伦瑞克省(加拿大)西北部的古纳米兹河。在对图像进行几何校正之后,使用了两个统计模型进行分类:(1)基于K均值算法提供的初始分割的Markov随机场模型,以解决相邻站点之间的空间统计依赖性。 (2)一个K分布模型,其中包含所有偏振信息的协方差矩阵作为参数。使用随机模拟退火算法优化分类。通过与现场清单测量结果进行比较来验证结果。对于RADARSAT-2四极化SAR图像,入射角为26 0和45°时获得的反向散射系数c°的变化范围为不同树种的1 dB和3 dB。对于26°入射角图像,该分类的平均准确率和总体准确率分别为77.13%和72.35%,而45°入射角的分类结果分别为81.47%和79.12%。

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