Accurate and robust pose estimation is a fundamental capability for autonomous systems to navigate, map and perform tasks. Particularly, construction environments pose challenging problem to Simultaneous Localization and Mapping (SLAM) algorithms due to sparsity, varying illumination conditions, and dynamic objects. Current academic research in SLAM is focused on developing more accurate and robust algorithms for example by fusing different sensor modalities. To help this research, we propose a new dataset, the Hilti SLAM Challenge Dataset. The sensor platform used to collect this dataset contains a number of visual, lidar and inertial sensors which have all been rigorously calibrated. All data is temporally aligned to support precise multi-sensor fusion. Each dataset includes accurate ground truth to allow direct testing of SLAM results. Raw data as well as intrinsic and extrinsic sensor calibration data from twelve datasets in various environments is provided. Each environment represents common scenarios found in building construction sites in various stages of completion.
翻译:准确和稳健的表面估计是自主系统导航、绘图和执行任务的基本能力。特别是,建筑环境对同时定位和绘图(SLAM)算法构成挑战性的问题,其原因是宽度、不同照明条件和动态物体。目前SLAM的学术研究侧重于开发更准确和稳健的算法,例如用不同传感器模式引信。为了帮助这一研究,我们提议了一个新的数据集,即Hilti SLAM挑战数据集。用于收集该数据集的传感器平台包含许多视觉、利达尔和惯性传感器,这些传感器都经过严格校准。所有数据都与精确的多传感器聚合相适应,每个数据集都包含准确的地面真相,以便直接测试SLAM的结果。提供了原始数据以及来自不同环境中12个数据集的内在和外部传感器校准数据。每个环境都代表建筑工地在不同完工阶段发现的共同情景。