Simultaneous Localization and Mapping (SLAM) is being deployed in real-world applications, however many state-of-the-art solutions still struggle in many common scenarios. A key necessity in progressing SLAM research is the availability of high-quality datasets and fair and transparent benchmarking. To this end, we have created the Hilti-Oxford Dataset, to push state-of-the-art SLAM systems to their limits. The dataset has a variety of challenges ranging from sparse and regular construction sites to a 17th century neoclassical building with fine details and curved surfaces. To encourage multi-modal SLAM approaches, we designed a data collection platform featuring a lidar, five cameras, and an IMU (Inertial Measurement Unit). With the goal of benchmarking SLAM algorithms for tasks where accuracy and robustness are paramount, we implemented a novel ground truth collection method that enables our dataset to accurately measure SLAM pose errors with millimeter accuracy. To further ensure accuracy, the extrinsics of our platform were verified with a micrometer-accurate scanner, and temporal calibration was managed online using hardware time synchronization. The multi-modality and diversity of our dataset attracted a large field of academic and industrial researchers to enter the second edition of the Hilti SLAM challenge, which concluded in June 2022. The results of the challenge show that while the top three teams could achieve accuracy of 2cm or better for some sequences, the performance dropped off in more difficult sequences.
翻译:同步本地化和绘图(SLAM)正在实际应用中部署,尽管许多最先进的解决方案在许多常见情景中仍然难以找到。推进SLM研究的关键需要是提供高质量的数据集以及公平透明的基准。为此,我们创建了Hilti-Oxford数据集(Silti-Oxford Dataset),将最先进的SLM系统推向极限。数据集有各种各样的挑战,从稀有和定期的建筑场地到17世纪新古典建筑,有细微细节和曲线表面。为了鼓励多式SLM方法,我们设计了一个数据收集平台,包括一个Ladar、5个相机和一个IMU(Iertial测量股)的数据收集程序。为了将SLM的算法用于最精确和稳健的任务,我们实施了一个新的地面收集方法,使我们的数据集能够准确测量SLM的误差。为了进一步确保准确性,我们平台的末端路由一个微米精确扫描仪进行校准,以及时间校准系统运行,我们设计了一个以更精确的顺序采集平台的平台的平台的平台的平台级程平台平台,以一个包含更精确的系统,用来对20版的进度进行测试,同时,并完成我们六月二版的高级的实地数据,同时对三组的实地数据进行高版本的实地测试,对20版的实地数据进行实地数据进行测试,对质的进度进行了测试,对质。