寻找地标建筑的3D显着性

Nikolay Kobyshev, Hayko Riemenschneider, A. Bódis-Szomorú, L. Gool
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引用次数: 6

摘要

在城市环境中,最有趣和有效的定位和导航因素是地标建筑。本文提出了一种新的方法来检测这些突出的建筑,即将被赋予“地标”的地位。该方法以完全无监督的方式工作,即它可以应用于不同的城市而不需要注释。首先,通过分析它们的特征以及在它们的空间邻域中发现的特征来检测显著点。其次,学习通过寻找连接的地标组件和训练分类器来细化点,将这些点与常见的建筑组件区分开来。第三,将地标构件聚合成完整的地标建筑。在城市尺度点云上的实验表明了我们的方法在各种任务上的可行性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D Saliency for Finding Landmark Buildings
In urban environments the most interesting and effective factors for localization and navigation are landmark buildings. This paper proposes a novel method to detect such buildings that stand out, i.e. would be given the status of 'landmark'. The method works in a fully unsupervised way, i.e. it can be applied to different cities without requiring annotation. First, salient points are detected, based on the analysis of their features as well as those found in their spatial neighborhood. Second, learning refines the points by finding connected landmark components and training a classifier to distinguish these from common building components. Third, landmark components are aggregated into complete landmark buildings. Experiments on city-scale point clouds show the viability and efficiency of our approach on various tasks.
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