基于hessighim 3D (H3D)的无人机激光雷达和多视立体高分辨率三维点云和纹理网格语义分割基准

Michael Kölle , Dominik Laupheimer , Stefan Schmohl , Norbert Haala , Franz Rottensteiner , Jan Dirk Wegner , Hugo Ledoux
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引用次数: 47

摘要

自动语义分割和目标检测在地理空间数据分析中具有重要意义。然而,像卷积神经网络这样的监督机器学习系统需要大量带注释的训练数据。特别是在地理空间领域,这样的数据集是相当稀缺的。在本文中,我们旨在通过引入一个新的注释3D数据集来缓解这一问题,该数据集在三个方面是独一无二的:i)该数据集由无人机(UAV)激光扫描点云和3D纹理网格组成。ii)点云的平均点密度约为800 pts/m2,用于3D网格纹理的斜向图像实现了约2-3 cm的地面采样距离。这使得细粒度结构的识别成为可能,并代表了基于无人机的映射技术的最新状态。iii)这两种数据模式将总共发布三个时代,允许诸如变化检测之类的应用。该数据集描绘了德国黑森海姆村,此后被称为H3D——要么表示为3D点云H3D(PC),要么表示为3D网格H3D(mesh)。它旨在一方面促进三维数据分析领域的研究,另一方面对两种数据模式的语义分割的现有和新兴方法进行评估和排名。最终,我们希望H3D能够与ISPRS Vaihingen 3D语义标记挑战基准(V3D)一起成为广泛使用的基准数据集。数据集可从https://ifpwww.ifp.uni-stuttgart.de/benchmark/hessigheim/default.aspx下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Hessigheim 3D (H3D) benchmark on semantic segmentation of high-resolution 3D point clouds and textured meshes from UAV LiDAR and Multi-View-Stereo

Automated semantic segmentation and object detection are of great importance in geospatial data analysis. However, supervised machine learning systems such as convolutional neural networks require large corpora of annotated training data. Especially in the geospatial domain, such datasets are quite scarce. Within this paper, we aim to alleviate this issue by introducing a new annotated 3D dataset that is unique in three ways: i) The dataset consists of both an Unmanned Aerial Vehicle (UAV) laser scanning point cloud and a 3D textured mesh. ii) The point cloud features a mean point density of about 800 ​pts/m2 and the oblique imagery used for 3D mesh texturing realizes a ground sampling distance of about 2–3 ​cm. This enables the identification of fine-grained structures and represents the state of the art in UAV-based mapping. iii) Both data modalities will be published for a total of three epochs allowing applications such as change detection. The dataset depicts the village of Hessigheim (Germany), henceforth referred to as H3D - either represented as 3D point cloud H3D(PC) or 3D mesh H3D(Mesh). It is designed to promote research in the field of 3D data analysis on one hand and to evaluate and rank existing and emerging approaches for semantic segmentation of both data modalities on the other hand. Ultimately, we hope that H3D will become a widely used benchmark dataset in company with the well-established ISPRS Vaihingen 3D Semantic Labeling Challenge benchmark (V3D). The dataset can be downloaded from https://ifpwww.ifp.uni-stuttgart.de/benchmark/hessigheim/default.aspx.

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