调查洪水地图的地理参考社交媒体数据的准确性:PetaJakarta.org案例研究

R. Ogie, H. Forehead
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引用次数: 11

摘要

地理参考社交媒体数据在创建近实时洪水地图方面的应用越来越多,这些地图需要提高数据匮乏地区的态势感知能力。然而,人们越来越担心,与洪水相关的社交媒体内容的地理参考位置并不总是与洪水事件的实际位置相对应。但这在多大程度上是正确的呢?没有这些知识,很难确定使用地理参考的社交媒体内容创建的洪水地图的准确性。本研究旨在提高对社交媒体洪水报道的地理参考位置偏离洪水实际位置的程度的理解。该研究分析了在沿海大城市雅加达实施的PetaJakarta.org项目中获得的与洪水有关的推文,并深入了解了使用地理参考社交媒体数据进行洪水测绘的预期精度。重要的是,研究结果表明,地理参考社交媒体数据生成的洪水图的精度随着洪水图最小制图单元大小的增加而降低。最后,推荐了一种从众包社交媒体数据中创建更准确的实时洪水地图的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating the accuracy of georeferenced social media data for flood mapping: The PetaJakarta.org case study
Georeferenced social media data are gaining increased application in creating near real-time flood maps needed to improve situational awareness in data-starved regions. However, there is growing concern that the georeferenced locations of flood-related social media contents do not always correspond to the actual locations of the flooding event. But to what extent is this true? Without this knowledge, it is difficult to ascertain the accuracy of flood maps created using georeferenced social media contents. This study aims to improve understanding of the extent to which georeferenced locations of social media flood reports deviate from the actual locations of floods. The study analyses flood-related tweets acquired as part of the PetaJakarta.org project implemented in the coastal mega-city of Jakarta and provides insight into the level of accuracy expected with using georeferenced social media data for flood mapping. Importantly, the results reveal that the accuracy of flood maps generated with georeferenced social media data reduces with increase in the size of the minimum mapping unit of the flood map. Finally, an approach is recommended for creating more accurate real time flood maps from crowdsourced social media data.
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