基于GLCM纹理的Sentinel-1雷达遥感数据在建筑损伤评估中的应用

Asset Akhmadiya, N. Nabiyev, K. Moldamurat, Aigerim Kismanova, B. Prmantayeva, S. Brimzhanova
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引用次数: 0

摘要

与其他卫星数据相比,利用Sentinel-1数据进行建筑损伤评估的科学论文较少。由于中空间分辨率,许多科学家忽略了它,因此一般趋势是使用高分辨率数据(TerraSAR-X, cosmos - skymed等)。这与中分辨率数据总体精度低于高分辨率数据的问题有关。哨兵1号的数据比其他卫星更容易获得。事件前的数据总是可用的。应用基于纹理的变化检测技术可以提高整体精度。利用灰度共生矩阵(GLCM)计算的纹理参数的同质性和差异性,可以更好地分离被完全破坏的建筑物和完整的建筑物。利用双极化后向散射系数(VV, VH)和相干系数(震前和同震资料)进行研究。确定最佳相关GLCM纹理参数变量,使用监督分类方法提取城市地区的开放区域(没有建筑物)和受损和未受影响的建筑物。在本研究工作中,总体精度达到0.77。对于开放区域,生产者的精度为0.84,对于损坏的建筑物为0.85,对于未损坏的建筑物为0.64。该分类利用了北京-2高分辨率光学数据和哥白尼应急管理服务数据。选取受2016年意大利中部地震影响较大的阿马特里切镇作为研究区域进行调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of GLCM Textural Based Method With Sentinel-1 Radar Remote Sensing Data for Building Damage Assessment
Comparison of other satellite data, there are fewer scientific papers about building damage assessment using Sentinel-1 data. Because many scientists ignore it due to middle-spatial resolution, the general trend is using high-resolution data (TerraSAR-X, COSMO-SkyMed, etc.) for that purpose. It is related to the problem that middle-resolution data has lower overall accuracy than high resolution. Sentinel-1 data is more freely available than others. Pre-event data is always available. The application of texture-based change detection techniques can be used to improve overall accuracy. Better separation of completely destroyed and intact buildings was achieved using homogeneity and dissimilarity textural parameters computed from the grey-level co-occurrence matrices (GLCM). The backscattering coefficients with dual polarization (VV, VH) and the coherence coefficient (pre-earthquake and coseismic data) were exploited for this study. The best relevant GLCM textural parameter variables were determined to extract open areas (without buildings), and damaged and untouched buildings in urban areas using supervised classification methods. In this research work, the overall accuracy was achieved at 0.77. The producer's accuracy for open areas is 0.84, for the case of a damaged building 0.85, and for untouched building 0.64. Beijing-2 high-resolution optical data and Copernicus Emergency Management Service data were exploited for that classification. Amatrice town as a study area chose for investigation as an example that was significantly affected by the earthquake in Central Italy in 2016.
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