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A radar-based method for detecting tsunami devastated areas using machine learning algorithm

机译:基于雷达的机器学习算法检测海啸灾区

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After catastrophic earthquakes and subsequent tsunamis, relief activity and reconstruction activity might be delayed due to the breakdown of information network and interception of roads to the devastated zones. To rapidly estimate the impact of the tsunami, air- or spaceborne remote sensing technologies can be used. In particular, Synthetic Aperture Radar (SAR) which is available independent of atmospheric conditions is promising. In this study, a semi-automatic method using high-resolution multi-temporal SAR data (TerraSAR-X) is proposed to estimate building damage in tsunami devastated areas related to the 2011 Tohoku earthquake tsunami. To develop the method, machine learning, a research field of artificial intelligence, is applied. Finally, evaluation of the model is conducted through cross-validation. The best accuracy is obtained as 89.2 % and kappa statistic is calculated as 0.76 when a decision tree approach (C4.5) is applied.
机译:灾难性地震和随后的海啸发生后,由于信息网络的故障和对灾区的道路的拦截,救援活动和重建活动可能会延迟。为了快速估计海啸的影响,可以使用空中或星载遥感技术。特别地,可获得独立于大气条件的合成孔径雷达(SAR)是有前途的。在这项研究中,提出了一种使用高分辨率多时相SAR数据(TerraSAR-X)的半自动方法来估算与2011年东北地震海啸有关的海啸受灾地区的建筑破坏。为了开发该方法,应用了机器学习(人工智能的研究领域)。最后,通过交叉验证对模型进行评估。当采用决策树方法(C4.5)时,获得的最佳准确度为89.2%,kappa统计量的计算结果为0.76。

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