首页> 外文期刊>Boletim de Ciências Geodésicas >Detec??o de constru??es induzidas por terremoto baseada na detec??o de modifica??es nos tra?os de textura em nível de objeto de imagens SAR multitemporais
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Detec??o de constru??es induzidas por terremoto baseada na detec??o de modifica??es nos tra?os de textura em nível de objeto de imagens SAR multitemporais

机译:基于在多时相SAR图像的目标水平上检测纹理迹线的变化来检测地震诱发的建筑物

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The damage of buildings is the major cause of casualties of from earthquakes. The traditional pixel-based earthquake damaged building detection method is prone to be affected by speckle noise. In this paper, an object-based change detection method is presented for the detection of earthquake damage using the synthetic aperture radar (SAR) data. The method is based on object-level texture features of SAR data. Firstly, the principal component analysis is used to transform the optimal texture features into a suitable feature space for extracting the key change. And then, the feature space is clustered by the watershed segmentation algorithm, which introduces the concept of object orientation and carries out the calculation of the difference map at the object level. Having training samples, the classification threshold values for different grade of earthquake damage can be trained, and the detection of damaged building is achieved. The proposed method could visualize the earthquake damage efficiently using the Advanced Land Observing Satellite-1 (ALOS-1) images. Its performance is evaluated in the town of jiegu, which was hit severely by the Yushu Earthquake. The cross-validation results shows that the overall accuracy is significantly higher than TDCD and IDCD.
机译:建筑物的损坏是地震造成人员伤亡的主要原因。传统的基于像素的地震破坏建筑物检测方法容易受到斑点噪声的影响。本文提出了一种基于目标的变化检测方法,用于使用合成孔径雷达(SAR)数据检测地震破坏。该方法基于SAR数据的对象级纹理特征。首先,使用主成分分析将最佳纹理特征转换为合适的特征空间,以提取关键点变化。然后,通过分水岭分割算法对特征空间进行聚类,引入了面向对象的概念,并在对象层次上进行了差异图的计算。有了训练样本,就可以训练不同等级的地震破坏的分类阈值,并实现对受损建筑物的检测。所提出的方法可以使用高级陆地观测卫星1(ALOS-1)图像有效地可视化地震破坏。其性能在受到玉树地震严重打击的结古镇进行了评估。交叉验证的结果表明,总体准确性显着高于TDCD和IDCD。

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