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首页> 外文期刊>International Journal of Geographical Information Science >Fine-grained landuse characterization using ground-based pictures: a deep learning solution based on globally available data
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Fine-grained landuse characterization using ground-based pictures: a deep learning solution based on globally available data

机译:使用地面的图片进行细粒度的土地使用:基于全局数据的深度学习解决方案

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We study the problem of landuse characterization at the urban-object level using deep learning algorithms. Traditionally, this task is performed by surveys or manual photo interpretation, which are expensive and difficult to update regularly. We seek to characterize usages at the single object level and to differentiate classes such as educational institutes, hospitals and religious places by visual cues contained in side-view pictures from Google Street View (GSV). These pictures provide geo-referenced information not only about the material composition of the objects but also about their actual usage, which otherwise is difficult to capture using other classical sources of data such as aerial imagery. Since the GSV database is regularly updated, this allows to consequently update the landuse maps, at lower costs than those of authoritative surveys. Because every urban-object is imaged from a number of viewpoints with street-level pictures, we propose a deep-learning based architecture that accepts arbitrary number of GSV pictures to predict the fine-grained landuse classes at the object level. These classes are taken from OpenStreetMap. A quantitative evaluation of the area of ile-de-France, France shows that our model outperforms other deep learning-based methods, making it a suitable alternative to manual landuse characterization.
机译:我们使用深入学习算法研究城市对象级别的土地使用问题。传统上,此任务由调查或手动照片解释执行,这是昂贵且难以定期更新的。我们寻求在谷歌街景(GSV)中侧视图片中包含的视觉线索等对象级别的用法和差异的课程,例如教育机构,医院和宗教场所等课程。这些图片不仅提​​供了地理引用的信息,不仅是关于物体的材料构成,而且提供了它们的实际使用情况,否则难以使用其他经典数据诸如空中图像。由于GSV数据库经常更新,这允许因此更新Landuse地图,而不是权威调查的成本。因为每个城市对象都是从街道级图片的许多观点上成像,所以我们提出了一种基于深度学习的架构,接受任意数量的GSV图片来预测对象级别的细粒度的崩解类别。这些类是从OpenStreetMap中获取的。法国Ile-de-France地区的定量评估表明,我们的模型优于其他基于深度学习的方法,使其成为手动土地使用表征的合适替代方案。

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