利用卫星图像检测到的变化更新街道地图

F. Bastani, Songtao He, Satvat Jagwani, Mohammad Alizadeh, Harinarayanan Balakrishnan, S. Chawla, Sam Madden, M. Sadeghi
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引用次数: 5

摘要

准确维护数字街道地图是一项劳动密集型工作。为了应对这一挑战,许多工作都在研究自动处理地理空间数据源,如GPS轨迹和卫星图像,以降低维护数字地图的成本。端到端地图更新系统将首先处理地理空间数据源以提取见解,然后利用这些见解更新和改进地图。然而,先前的工作主要集中在该管道的第一步:这些地图提取方法从零开始推断出给定地理空间数据源的道路网络(实际上是创建全新的地图),但没有解决利用提取的信息更新现有地图数据的第二步。在本文中,我们首先解释了为什么当前的地图提取技术在扩展到更新现有地图时精度较低。然后,我们提出了一种新的方法,利用卫星图像随时间的变化来大大提高精度。我们的方法首先比较不同时间拍摄的卫星图像,以确定物理道路网络中明显变化的部分,然后相应地更新现有地图。我们表明,基于变化的方法将错误率降低了四倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Updating Street Maps using Changes Detected in Satellite Imagery
Accurately maintaining digital street maps is labor-intensive. To address this challenge, much work has studied automatically processing geospatial data sources such as GPS trajectories and satellite images to reduce the cost of maintaining digital maps. An end-to-end map update system would first process geospatial data sources to extract insights, and second leverage those insights to update and improve the map. However, prior work largely focuses on the first step of this pipeline: these map extraction methods infer road networks from scratch given geospatial data sources (in effect creating entirely new maps), but do not address the second step of leveraging this extracted information to update the existing map data. In this paper, we first explain why current map extraction techniques yield low accuracy when extended to update existing maps. We then propose a novel method that leverages the progression of satellite imagery over time to substantially improve accuracy. Our approach first compares satellite images captured at different times to identify portions of the physical road network that have visibly changed, and then updates the existing map accordingly. We show that our change-based approach reduces error rates four-fold.
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