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Modeling structure and aerosol concentration with fused radar and LiDAR data in environments with changing visibility

机译:利用改变可见性的环境中使用熔融雷达和LIDAR数据的建模结构和气溶胶浓度

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LiDAR scanners are commonly used for mapping and localization with mobile robots. But, they cannot see through occlusions, as it occurs in harsh environments, containing smoke, fog or dust. Radar scanners can overcome this problem, but they have lower range and angular resolution, and cannot represent an environment in the same quality. In the following article, we present the integration of fused LiDAR and radar data into a SLAM cycle and continue our work from [1], where we presented first results regarding a feature based and a scan matching-based approach for SLAM in environments with changing visibility using LiDAR and radar sensors. New content in this article, the data fusion takes place on scan level as well as on map level and aims to result in an optimum map quality considering the visibility situation. Additionally, we collected more data during an indoor experiment involving real fog (see Fig. 1). Besides the structure of the environment, we can model aerosol concentration with fused LiDAR and Radar data in parallel to the mapping process with a finite difference model without involving a smoke or gas sensor. Overall, our method allows the modeling of the structure of an environment including dynamic distribution of aerosol concentration.
机译:LIDAR扫描仪通常用于移动机器人的映射和本地化。但是,他们无法通过闭塞看到,因为它发生在恶劣环境中,含有烟雾,雾或灰尘。雷达扫描仪可以克服这个问题,但它们具有较低的范围和角度分辨率,并且不能代表具有相同质量的环境。在下文中,我们介绍了融合的LIDAR和雷达数据的集成到一个SLAM循环中,并继续从[1]中的工作,在那里我们提供了关于基于特征的第一个结果,并在改变环境中扫描基于匹配的基于匹配的匹配方法。使用激光雷达和雷达传感器的可视性。本文中的新内​​容,数据融合在扫描级别以及地图级别进行,旨在导致考虑可见性情况的最佳地图质量。此外,我们在涉及真实雾的室内实验期间收集更多数据(参见图1)。除了环境的结构之外,我们还可以用熔融激光雷达和雷达数据模拟气溶胶浓度和雷达数据,其与映射过程平行,在没有涉及烟雾或气体传感器的情况下具有有限差异模型。总的来说,我们的方法允许建模环境的结构,包括气溶胶浓度的动态分布。

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