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Distributed Fusion of Heterogeneous Remote Sensing and Social Media Data: A Review and New Developments

机译:异构遥感和社交媒体数据的分布式融合:审查和新的发展

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摘要

Despite the wide availability of remote sensing big data from numerous different Earth Observation (EO) instruments, the limitations in the spatial and temporal resolution of such EO sensors (as well as atmospheric opacity and other kinds of interferers) have led to many situations in which using only remote sensing data cannot fully meet the requirements of applications in which a (near) real-time response is needed. Examples of these applications include floods, earthquakes, and other kinds of natural disasters, such as typhoons. To address this issue, social media data have gradually been adopted to fill possible gaps in the analysis when remote sensing data are lacking or incomplete. In this case, the fusion of heterogeneous big data streams from multiple data sources introduces significant demands from a computational viewpoint. In order to meet these challenges, distributed computing is increasingly viewed as a feasible solution to parallelize the analysis of massive data coming from different sources (e.g., remote sensing and social media data). In this article, we provide an overview of available and new distributed strategies to address the computational challenges brought by massive heterogeneous data processing and fusion for real-time environmental monitoring and decision-making. The 2013 Boulder (Colorado) flood event is taken as a case study to evaluate several new distributed data fusion frameworks. Experimental results demonstrate that the proposed distributed frameworks are suitable in terms of response time and computational requirements for fusing large-volume heterogeneous data sources.
机译:尽管遥感来自许多不同地球观测(EO)仪器的遥感大数据,但这种EO传感器的空间和时间分辨率的局限性(以及大气不透明度和其他种类的干扰源)导致了许多情况仅使用遥感数据无法完全满足所需的(近)实时响应的应用程序的要求。这些应用的例子包括洪水,地震和其他类型的自然灾害,例如台风。为了解决这个问题,当遥感数据缺乏或不完整时,社交媒体数据逐渐被采用填补分析中的可能间隙。在这种情况下,来自多个数据源的异构大数据流的融合引入了计算视点的显着要求。为了满足这些挑战,分布式计算越来越多地被视为可行的解决方案,以并行化来自不同来源的大规模数据的分析(例如,遥感和社交媒体数据)。在本文中,我们概述了可用和新的分布式策略,以解决大规模异构数据处理和融合为实时环境监测和决策而带来的计算挑战。 2013年博尔德(科罗拉多州)洪水事件是为了评估几个新的分布式数据融合框架的案例研究。实验结果表明,所提出的分布式框架适用于融合大量异构数据源的响应时间和计算要求。

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