Semantics-enabled Spatio-Temporal Modeling of Earth Observation Data: An application to Flood Monitoring

Kuldeep R. Kurte, Abhishek V. Potnis, S. Durbha
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引用次数: 6

Abstract

Extreme events such as urban floods are dynamic in nature, i.e. they evolve with time. The spatiotemporal analysis of such disastrous events is important for understanding the resiliency of an urban system during these events. Remote Sensing (RS) data is one of the crucial earth observation (EO) data sources that can facilitate such spatiotemporal analysis due to its wide spatial coverage and high temporal availability. In this paper, we propose a discrete mereotopology (DM) based approach to enable representation and querying of spatiotemporal information from a series of multitemporal RS images that are acquired during a flood disaster event. We represent this spatiotemporal information using a semantic model called Dynamic Flood Ontology (DFO). To establish the effectiveness and applicability of the proposed approach, spatiotemporal queries relevant during an urban flood scenario such as, show me road segments that were partially flooded during the time interval t1 have been demonstrated with promising results.
基于语义的地球观测数据时空建模:在洪水监测中的应用
像城市洪水这样的极端事件本质上是动态的,即它们随着时间的推移而演变。这类灾难性事件的时空分析对于理解城市系统在这些事件中的恢复能力非常重要。遥感(RS)数据是地球观测(EO)数据的重要来源之一,其空间覆盖范围广,时间可用性高,可为此类时空分析提供便利。在本文中,我们提出了一种基于离散元拓扑(DM)的方法来表示和查询在洪水灾害事件中获取的一系列多时相RS图像的时空信息。我们使用一个称为动态洪水本体(DFO)的语义模型来表示这些时空信息。为了确定所提出方法的有效性和适用性,在城市洪水场景中相关的时空查询,如在时间间隔t1期间部分被淹没的路段,已经得到了有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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