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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Geographic Optimal Transport for Heterogeneous Data: Fusing Remote Sensing and Social Media
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Geographic Optimal Transport for Heterogeneous Data: Fusing Remote Sensing and Social Media

机译:异构数据的地理最优运输:融合遥感和社交媒体

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摘要

The fusion of heterogeneous remote sensing and social media data can fill the gaps in satellite image collections and improve the spatiotemporal resolution of the available data sets. As a result, it is being gradually adopted in multimodal data analytics. Generally, the fusion of heterogeneous geographic data faces the following issues: 1) the probability density functions may differ from different data sources and 2) the geolocations may not be well aligned. The former one can be generally solved by performing an alignment of representations in the source and target domains using, for instance, domain adaptation. The latter issue is seldom considered in the fusion of heterogeneous geographic data. In this article, we present a new method called geographic optimal transport (GOT), which aims at aligning representations and geolocations in a simultaneous fashion. A flood event that took place in 2013 in Boulder, CO, USA, is taken as a case study to evaluate our GOT method. Here, we consider two remote sensing features derived from water indicators, i.e., the normalized difference vegetation index (NDVI) and the normalized difference water index (NDWI), for the fusion of Landsat 8 imagery and Twitter data. A comparison between our newly developed GOT and the traditional optimal transport (OT) is performed. Experimental results demonstrate that the proposed GOT can accurately align spatially biased georeferenced tweets to the flood phenomena, leading to the conclusion that GOT can effectively fuse heterogeneous remote sensing and social media data.
机译:异构遥感和社交媒体数据的融合可以填补卫星图像集合中的差距,并提高可用数据集的时空分辨率。结果,在多模式数据分析中逐渐采用。通常,异构地理数据的融合面临以下问题:1)概率密度函数可能与不同的数据源不同,并且2)地理局部可能不良好对齐。前者可以通过使用例如域自适应执行源域中的表示和目标域中的表示对齐来解决。后一种问题很少考虑在异构地理数据的融合中。在本文中,我们提出了一种称为地理最优运输(GOT)的新方法,旨在以同时的方式对准表示和地理局。 2013年在美国博尔德举行的洪水事件是为了评估我们获得的方法的案例研究。在这里,我们考虑源自水指示器的两个遥感特征,即归一化差异植被指数(NDVI)和归一化差异水指数(NDWI),用于融合Landsat 8图像和Twitter数据。我们新开发的GOT与传统最优传输(OT)之间的比较是进行的。实验结果表明,建议可以准确地将空间偏向的地理指导推文与洪水现象对齐,导致可以有效地融合异构遥感和社交媒体数据的结论。

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