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Combining Multi-resolution Evidence for Georeferencing Flickr Images

机译:结合多分辨率证据对Flickr图像进行地理配准

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We explore the task of determining the geographic location of photos on Flickr, using combined evidence from Naive Bayes classifiers that are trained at different spatial resolutions. In particular, we estimate the location of Flickr photos, based on their tags, at four different scales, ranging from a city-level granularity to fine-grained intra-city areas. Using Dempster-Shafer's evidence theory, we combine the output of the different classifiers into a single mass assignment. We demonstrate experimentally that the induced belief and plausibility measures are useful to determine whether there is sufficient evidence to classify the photo at a given granularity. Thus an adaptive method is obtained, by which photos are georeferenced at the most appropriate resolution.
机译:我们使用来自Naive Bayes分类器的组合证据(在不同的空间分辨率下训练),探索确定照片在Flickr上的地理位置的任务。尤其是,我们根据Flickr照片的标签以四种不同的比例来估计Flickr照片的位置,这些比例从城市级别的粒度到城市内的细粒度区域。使用Dempster-Shafer的证据理论,我们将不同分类器的输出组合到单个质量分配中。我们通过实验证明,诱导的信念和合理性度量对于确定是否有足够的证据对给定粒度的照片进行分类很有用。因此,获得了一种自适应方法,通过该方法可以以最合适的分辨率对照片进行地理配准。

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