We propose a fast and robust method to estimate the ground surface from LIDAR measurements on an automated vehicle. The ground surface is modeled as a UBS which is robust towards varying measurement densities and with a single parameter controlling the smoothness prior. We model the estimation process as a robust LS optimization problem which can be reformulated as a linear problem and thus solved efficiently. Using the SemanticKITTI data set, we conduct a quantitative evaluation by classifying the point-wise semantic annotations into ground and non-ground points. Finally, we validate the approach on our research vehicle in real-world scenarios.
翻译:我们建议采用快速和稳健的方法,从自动飞行器的LIDAR测量中估算地面。地面以UBS模式建模,以适应不同的测量密度,并有一个单一参数控制先前的平滑性。我们将估算过程建模为一个稳健的LS优化问题,可以重拟为一个线性问题,从而有效解决。我们利用SemanticKITTI数据集,通过将点性语义说明分解为地面和非地面点,进行定量评估。最后,我们在现实世界情景中验证了我们研究工具的方法。