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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >Fusing Heterogeneous Data: A Case for Remote Sensing and Social Media
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Fusing Heterogeneous Data: A Case for Remote Sensing and Social Media

机译:融合异构数据:遥感和社交媒体的案例

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Data heterogeneity can pose a great challenge to process and systematically fuse low-level data from different modalities with no recourse to heuristics and manual adjustments and refinements. In this paper, a new methodology is introduced for the fusion of measured data for detecting and predicting weather-driven natural hazards. The proposed research introduces a robust theoretical and algorithmic framework for the fusion of heterogeneous data in near real time. We establish a flexible information-based fusion framework with a target optimality criterion of choice, which for illustration, is specialized to a maximum entropy principle and a least effort principle for semisupervised learning with noisy labels. We develop a methodology to account for multimodality data and a solution for addressing inherent sensor limitations. In our case study of interest, namely, that of flood density estimation, we further show that by fusing remote sensing and social media data, we can develop well founded and actionable flood maps. This capability is valuable in situations where environmental hazards, such as hurricanes or severe weather, affect very large areas. Relative to the state of the art working with such data, our proposed information-theoretic solution is principled and systematic, while offering a joint exploitation of any set of heterogeneous sensor modalities with minimally assuming priors. This flexibility is coupled with the ability to quantitatively and clearly state the fusion principles with very reasonable computational costs. The proposed method is tested and substantiated with the multimodality data of a 2013 Boulder Colorado flood event.
机译:数据异构性可能给处理和系统融合来自不同模式的低级数据带来巨大挑战,而无需依靠启发式方法以及手动调整和完善。在本文中,引入了一种新的方法来融合测量数据,以检测和预测天气驱动的自然灾害。拟议的研究引入了鲁棒的理论和算法框架,用于近实时地融合异构数据。我们建立了一个灵活的基于信息的融合框架,该框架具有选择的目标最优性准则,为说明起见,它专门针对具有熵标签的半监督学习的最大熵原理和最小努力原理。我们开发了一种解决多模态数据的方法,并解决了传感器固有的局限性。在我们感兴趣的案例研究中,即洪水密度估计的案例研究中,我们进一步表明,通过融合遥感和社交媒体数据,我们可以开发良好的,可行的洪水地图。在飓风或恶劣天气等环境危害影响很大区域的情况下,此功能非常有用。相对于使用此类数据的最新技术,我们提出的信息理论解决方案是原则性和系统性的,同时提供了对任何一组异类传感器模态的联合开发,且先验条件假设最少。这种灵活性与以非常合理的计算成本定量清晰地陈述融合原理的能力相结合。所提出的方法已通过2013年科罗拉多州博尔德洪水事件的多模态数据进行了测试和证实。

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