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A comprehensive analysis of earthquake damage patterns using high dimensional model representation feature selection

机译:使用高维模型表示特征选择对地震破坏模式进行综合分析

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Recently, earthquake damage assessment using satellite images has been a very popular ongoing research direction. Especially with the availability of very high resolution (VHR) satellite images, a quite detailed damage map based on building scale has been produced, and various studies have also been conducted in the literature. As the spatial resolution of satellite images increases, distinguishability of damage patterns becomes more cruel especially in case of using only the spectral information during classification. In order to overcome this diffucul-tity, textural information needs to be involved to the classification to improve the visual quality and reliability of damage map. There are many kinds of textural information which can be derived from VHR satellite images depending on the algorithm used. However, extraction of textural information and evaluation of them have been generally a time consuming process especially for the large areas affected from the earthquake due to the size of VHR image. Therefore, in order to provide a quick damage map, the most useful features describing damage patterns needs to be known in advance as well as the redundant features. In this study, a very high resolution satellite image after Iran, Bam earthquake was used to identify the earthquake damage. Not only the spectral information, textural information was also used during the classification. For textural information, second order Haralick features were extracted from the panchromatic image for the area of interest using gray level co-occurrence matrix with different size of windows and directions. In addition to using spatial features in classification, the most useful features representing the damage characteristic were selected with a novel feature selection method based on high dimensional model representation (HDMR) giving sensitivity of each feature during classification. The method called HDMR was recently proposed as an efficient tool to capture the input-output relationships in high-dimensional systems for many problems in science and engineering. The HDMR method is developed to improve the efficiency of the deducing high dimensional behaviors. The method is formed by a particular organization of low dimensional component functions, in which each function is the contribution of one or more input variables to the output variables.
机译:最近,使用卫星图像进行地震破坏评估一直是非常流行的正在进行的研究方向。尤其是在获得非常高分辨率(VHR)卫星图像的情况下,已经生成了基于建筑物比例的非常详细的破坏图,并且在文献中也进行了各种研究。随着卫星图像空间分辨率的提高,损坏模式的可分辨性变得更加残酷,尤其是在分类过程中仅使用光谱信息的情况下。为了克服这种困难,分类中需要包含纹理信息,以提高损伤图的视觉质量和可靠性。视所使用的算法而定,可以从VHR卫星图像中得出多种纹理信息。但是,由于VHR图像的大小,特别是对于受地震影响的大区域,提取纹理信息并对其进行评估通常是一个耗时的过程。因此,为了提供快速的损坏图,描述损坏模式的最有用的功能以及冗余功能都需要事先知道。在这项研究中,使用了伊朗巴姆地震后的高分辨率卫星图像来识别地震破坏。分类过程中不仅使用了光谱信息,还使用了纹理信息。对于纹理信息,使用具有不同大小的窗口和方向的灰度共生矩阵,从感兴趣区域的全色图像中提取了二阶Haralick特征。除了在分类中使用空间特征外,还使用一种基于高维模型表示(HDMR)的新颖特征选择方法来选择表示损伤特征的最有用特征,从而在分类过程中提供每个特征的敏感性。最近提出了一种称为HDMR的方法,该方法可作为捕获高维系统中许多科学和工程问题的输入-输出关系的有效工具。开发HDMR方法以提高推断高维行为的效率。该方法由低维分量函数的特定组织形成,其中每个函数是一个或多个输入变量对输出变量的贡献。

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