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Georeferencing Flickr resources based on textual meta-data

机译:基于文本元数据对Flickr资源进行地理配准

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摘要

The task of automatically estimating the location of web resources is of central importance in location-based services on the Web. Much attention has been focused on Flickr photos and videos, for which it was found that language modeling approaches are particularly suitable. In particular, state-of-the art systems for georeferencing Flickr photos tend to cluster the locations on Earth in a relatively small set of disjoint regions, apply feature selection to identify location-relevant tags, then use a form of text classification to identify which area is most likely to contain the true location of the resource, and finally attempt to find an appropriate location within the identified area. In this paper, we present a systematic discussion of each of the aforementioned components, based on the lessons we have learned from participating in the 2010 and 2011 editions of MediaEval's Placing Task. Extensive experimental results allow us to analyze why certain methods work well on this task and show that a median error of just over 1 km can be achieved on a standard benchmark test set.
机译:在Web上基于位置的服务中,自动估计Web资源位置的任务至关重要。人们对Flickr的照片和视频给予了很多关注,他们发现语言建模方法特别适合。特别是,用于对Flickr照片进行地理配准的最先进的系统倾向于将地球上的位置聚集在相对较小的不相交区域集中,应用特征选择来识别与位置相关的标签,然后使用文本分类的形式来识别哪个区域最有可能包含资源的真实位置,最后尝试在标识的区域内找到合适的位置。在本文中,我们将根据从参加MediaEval的2010年和2011年版《配售任务》中获得的经验教训,对上述每个组件进行系统的讨论。大量的实验结果使我们能够分析某些方法为何能很好地完成此任务,并表明在标准基准测试仪上可以实现仅1 km以上的中值误差。

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