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Correcting rural building annotations in OpenStreetMap using convolutional neural networks

机译:使用卷积神经网络校正OpenStreetMap中的乡村建筑注释

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Rural building mapping is paramount to support demographic studies and plan actions in response to crisis that affect those areas. Rural building annotations exist in OpenStreetMap (OSM), but their quality and quantity are not sufficient for training models that can create accurate rural building maps. The problems with these annotations essentially fall into three categories: (i) most commonly, many annotations are geometrically misaligned with the updated imagery; (ii) some annotations do not correspond to buildings in the images (they are misannotations or the buildings have been destroyed); and (iii) some annotations are missing for buildings in the images (the buildings were never annotated or were built between subsequent image acquisitions). First, we propose a method based on Markov Random Field (MRF) to align the buildings with their annotations. The method maximizes the correlation between annotations and a building probability map while enforcing that nearby buildings have similar alignment vectors. Second, the annotations with no evidence in the building probability map are removed. Third, we present a method to detect non-annotated buildings with predefined shapes and add their annotation. The proposed methodology shows considerable improvement in accuracy of the OSM annotations for two regions of Tanzania and Zimbabwe, being more accurate than state-of-the-art baselines.
机译:农村建筑制图对于支持人口统计研究和计划应对影响这些地区的危机的行动至关重要。 OpenStreetMap(OSM)中存在农村建筑注释,但是它们的质量和数量不足以训练可以创建准确的农村建筑地图的模型。这些注释的问题基本上可分为三类:(i)最常见的是,许多注释在几何上与更新的图像未对齐; (ii)一些注释与图像中的建筑物不对应(它们是错误注释或建筑物已被破坏); (iii)图像中的建筑物缺少一些注释(这些建筑物从未被注释过,或者是在随后的图像采集之间建立的)。首先,我们提出一种基于马尔可夫随机场(MRF)的方法,将建筑物与其注释对齐。该方法使注释和建筑物概率图之间的相关性最大化,同时强制附近的建筑物具有相似的对齐矢量。其次,删除在建筑概率图中没有证据的注释。第三,我们提出一种方法来检测具有预定义形状的未注释建筑物并添加其注释。拟议的方法显示坦桑尼亚和津巴布韦两个地区的OSM注释的准确性有了显着提高,比最新的基准更为准确。

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