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Building damage assessment from PolSAR data using texture parameters of statistical model

机译:使用统计模型的纹理参数从PolSAR数据进行建筑物破坏评估

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Accurate building damage assessment is essential in providing decision support for disaster relief and reconstruction. Polarimetric synthetic aperture radar (PolSAR) has become one of the most effective means of building damage assessment, due to its all-day/all-weather ability and richer backscatter information of targets. However, intact buildings that are not parallel to the SAR flight pass (termed oriented buildings) and collapsed buildings share similar scattering mechanisms, both of which are dominated by volume scattering. This characteristic always leads to misjudgments between assessments of collapsed buildings and oriented buildings from PolSAR data. Because the collapsed buildings and the intact buildings (whether oriented or parallel buildings) have different textures, a novel building damage assessment method is proposed in this study to address this problem by introducing texture parameters of statistical models. First, the logarithms of the estimated texture parameters of different statistical models are taken as a new texture feature to describe the collapse of the buildings. Second, the collapsed buildings and intact buildings are distinguished using an appropriate threshold. Then, the building blocks are classified into three levels based on the building block collapse rate. Moreover, this paper also discusses the capability for performing damage assessment using texture parameters from different statistical models or using different estimators. The RADARSAT-2 and ALOS-1 PolSAR images are used to present and analyze the performance of the proposed method. The results show that using the texture parameters avoids the problem of confusing collapsed and oriented buildings and improves the assessment accuracy. The results assessed by using the K/G(0) distribution texture parameters estimated based on the second moment obtain the highest extraction accuracies. For the RADARSAT-2 and ALOS-1 data, the overall accuracy (OA) for these three types of buildings is 73.39% and 68.45%, respectively.
机译:准确的建筑物损坏评估对于为救灾和重建提供决策支持至关重要。极化合成孔径雷达(PolSAR)由于具有全天候/全天候能力以及更丰富的目标反向散射信息,已成为建筑物损坏评估中最有效的手段之一。但是,不平行于SAR飞行通行证的完整建筑物(称为定向建筑物)和倒塌的建筑物具有相似的散射机制,两者均以体积散射为主。这种特征总是会导致根据PolSAR数据对倒塌的建筑物和定向的建筑物进行评估之间存在误判。由于倒塌的建筑物和完整的建筑物(无论是定向建筑物还是平行建筑物)具有不同的纹理,因此本研究提出了一种新的建筑物破坏评估方法,通过引入统计模型的纹理参数来解决该问题。首先,将不同统计模型的估计纹理参数的对数作为描述建筑物倒塌的新纹理特征。其次,使用适当的阈值区分倒塌的建筑物和完整的建筑物。然后,根据构建块崩溃率将构建块分为三个级别。此外,本文还讨论了使用来自不同统计模型或使用不同估计量的纹理参数进行损坏评估的能力。 RADARSAT-2和ALOS-1 PolSAR图像用于表示和分析所提出方法的性能。结果表明,使用纹理参数避免了建筑物倒塌和定向混乱的问题,提高了评估的准确性。通过使用基于第二时刻估计的K / G(0)分布纹理参数评估的结果获得了最高的提取精度。对于RADARSAT-2和ALOS-1数据,这三种类型的建筑物的总体准确度(OA)分别为73.39%和68.45%。

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