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AUTOMATED PROCESSING OF HIGH RESOLUTION AIRBORNE IMAGES FOR EARTHQUAKE DAMAGE ASSESSMENT

机译:用于地震损伤评估的高分辨率空气图像的自动化处理

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Emergency response ought to be rapid, reliable and efficient in terms of bringing the necessary help to sites where it is actually needed. Although the remote sensing techniques require minimum fieldwork and allow for continuous coverage, the established approaches rely on a vast manual work and visual assessment thus are time-consuming and imprecise. Automated processes with little possible interaction are in demand. This paper attempts to address the aforementioned issues by employing an unsupervised classification approach to identify building areas affected by an earthquake event. The classification task is formulated in the Markov Random Fields (MRF) framework and only post-event airborne high-resolution images serve as the input. The generated photogrammetric Digital Surface Model (DSM) and a true orthophoto provide height and spectral information to characterize the urban scene through a set of features. The classification proceeds in two phases, one for distinguishing the buildings out of an urban context (urban classification), and the other for identifying the damaged structures (building classification). The algorithms are evaluated on a dataset consisting of aerial images (7cm GSD) taken after the Emilia-Romagna (Italy) earthquake in 2012.
机译:在为实际需要的网站带来必要的帮助方面,应迅速,可靠和高效。虽然遥感技术需要最小的实地工作并允许连续覆盖,但是建立的方法依赖于庞大的手动工作和视觉评估,因此是耗时和不精确的。具有较少可能互动的自动化过程是有需求的。本文试图通过聘请无监督的分类方法来识别受地震事件影响的建筑区域的上述问题。分类任务在Markov随机字段(MRF)框架中制定,并且仅发生后的机载高分辨率图像用作输入。生成的摄影测量数字表面模型(DSM)和真正的邻芯片提供高度和光谱信息,以通过一组特征来表征城市场景。分类在两个阶段进行,一个用于将建筑物区分开从城市背景(城市分类),另一个阶段,以及用于识别受损结构的另一个阶段(建筑物分类)。在2012年在Emilia-Romagna(意大利)地震之后采用的航空图像(7cm GSD)组成的数据集评估该算法。

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