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A Minimum Cover Approach for Extracting the Road Network from Airborne LIDAR Data

机译:从机载LIDAR数据中提取道路网络的最低​​封面方法

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We address the problem of extracting the road network from large-scale range datasets. Our approach is fully automatic and does not require any inputs other than depth and intensity measurements from the range sensor. Road extraction is important because it provides contextual information for scene analysis and enables automatic content generation for geographic information systems (GIS). In addition to these two applications, road extraction is an intriguing detection problem because robust detection requires integration of local and long-range constraints. Our approach segments the data based on both edge and region properties and then extracts roads using hypothesis testing. Road extraction is formulated as a minimum cover problem, whose approximate solutions can be computed efficiently. Besides detecting and extracting the road network, we also present a technique for segmenting the entire city into blocks. We show experimental results on large-scale data that cover a large part of a city, with diverse landscapes and road types.
机译:我们解决了从大规模范围数据集提取道路网络的问题。我们的方法是全自动的,不需要除了范围传感器的深度和强度测量以外的任何输入。道路提取很重要,因为它提供了场景分析的上下文信息,并为地理信息系统(GIS)提供自动内容生成。除了这两个应用外,道路提取是一种有趣的检测问题,因为鲁棒检测需要集成局部和远程约束。我们的方法基于边缘和区域属性分段数据,然后使用假设测试提取道路。道路提取被制定为最低封面问题,其近似解决方案可以有效地计算。除了检测和提取道路网络外,我们还提出了一种将整个城市分割成块的技术。我们在大型数据上显示实验结果,涵盖一个城市的大部分,具有不同的景观和道路类型。

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