Ground filtering has remained a widely studied but incompletely resolved bottleneck for decades in the automatic generation of high-precision digital elevation model, due to the dramatic changes of topography and the complex structures of objects. The recent breakthrough of supervised deep learning algorithms in 3D scene understanding brings new solutions for better solving such problems. However, there are few large-scale and scene-rich public datasets dedicated to ground extraction, which considerably limits the development of effective deep-learning-based ground filtering methods. To this end, we present OpenGF, first Ultra-Large-Scale Ground Filtering dataset covering over 47 $km^2$ of 9 different typical terrain scenes built upon open ALS point clouds of 4 different countries around the world. OpenGF contains more than half a billion finely labeled ground and non-ground points, thousands of times the number of labeled points than the de facto standard ISPRS filtertest dataset. We extensively evaluate the performance of state-of-the-art rule-based algorithms and 3D semantic segmentation networks on our dataset and provide a comprehensive analysis. The results have confirmed the capability of OpenGF to train deep learning models effectively. This dataset will be released at https://github.com/Nathan-UW/OpenGF to promote more advancing research for ground filtering and large-scale 3D geographic environment understanding.
翻译:几十年来,由于地貌和物体结构的急剧变化,在自动生成高精度数字高程模型方面,地面过滤仍是一个经过广泛研究但未完全解决的瓶颈,因为地形和复杂天体结构发生了巨大变化。最近监督的三维场点理解深学习算法的突破为更好地解决这些问题带来了新的解决办法。然而,专门用于地面提取的大型和场景丰富的公共数据集很少,大大限制了有效的深层次地面过滤法的开发。为此,我们提出了涵盖47美元以上高精度数字高端模型的首个超大空地面过滤数据集,其中9个不同的典型地形场景建在4个世界不同国家的开放ALS点云上。开放GFP包含超过5亿个细微贴标签的地面和非地面点,比事实上标准的ISSPRS过滤测试数据集多几千倍。我们广泛评价了我们数据集上基于规则的州级算法和3D级地面过滤网的性能,并提供了全面分析。公开GFM/FS-RO-GF的深度模型将有效地用于深层次学习。