Mountain Peak Identification in Visual Content Based on Coarse Digital Elevation Models

MAED '14 Pub Date : 2014-11-07 DOI:10.1145/2661821.2661825
Roman Fedorov, P. Fraternali, M. Tagliasacchi
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引用次数: 12

Abstract

We present a method for the identification of mountain peaks in geo-tagged photos. The key tenet is to perform an edge-based matching between the visual content of each photo and a terrain view synthesized from a Digital Elevation Model (DEM). The latter is generated as if a virtual observer is located at the coordinates indicated by the geo-tag. The key property of the method is the ability to reach a highly accurate estimation of the position of mountain peaks with a coarse resolution DEM available in the corresponding geographical area, which is sampled at a spatial resolution between 30m and 90m. This is the case for publicly available DEMs that cover almost the totality of the Earth surface (such as SRTM CGIAR and ASTER GDEM). The method is fully unsupervised, thus it can be applied to the analysis of massive amounts of user generated content available, e.g., on Flickr and Panoramio. We evaluated our method on a dataset of manually annotated images of mountain landscapes, containing peaks of the Italian and Swiss Alps. Our results show that it is possible to accurately identify the peaks in 75.0% of the cases. This result increases to 81.6% when considering only photos with mountain slopes far from the observer.
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基于粗数字高程模型的视觉内容山峰识别
我们提出了一种在地理标记照片中识别山峰的方法。关键原则是在每张照片的视觉内容和由数字高程模型(DEM)合成的地形视图之间执行基于边缘的匹配。后者的生成就好像一个虚拟观察者位于地理标记所指示的坐标上。该方法的关键特性是能够利用相应地理区域内的粗分辨率DEM,以30m - 90m的空间分辨率采样,获得高度精确的山峰位置估计。这是覆盖几乎整个地球表面的公开可用的dem(如SRTM CGIAR和ASTER GDEM)的情况。该方法是完全无监督的,因此它可以应用于分析大量可用的用户生成内容,例如Flickr和Panoramio。我们在一个人工标注的山地景观图像数据集上评估了我们的方法,其中包括意大利和瑞士阿尔卑斯山的山峰。我们的结果表明,在75.0%的病例中,可以准确地识别出峰值。当只考虑距离观察者较远的山坡照片时,这一结果增加到81.6%。
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