The INSANE dataset: Large number of sensors for challenging UAV flights in Mars analog, outdoor, and out-/indoor transition scenarios

Christian Brommer, Alessandro Fornasier, Martin Scheiber, J. Delaune, R. Brockers, J. Steinbrener, Stephan Weiss
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Abstract

For real-world applications, autonomous mobile robotic platforms must be capable of navigating safely in a multitude of different and dynamic environments with accurate and robust localization being a key prerequisite. To support further research in this domain, we present the INSANE datasets (Increased Number of Sensors for developing Advanced and Novel Estimators)—a collection of versatile Micro Aerial Vehicle (MAV) datasets for cross-environment localization. The datasets provide various scenarios with multiple stages of difficulty for localization methods. These scenarios range from trajectories in the controlled environment of an indoor motion capture facility, to experiments where the vehicle performs an outdoor maneuver and transitions into a building, requiring changes of sensor modalities, up to purely outdoor flight maneuvers in a challenging Mars analog environment to simulate scenarios which current and future Mars helicopters would need to perform. The presented work aims to provide data that reflects real-world scenarios and sensor effects. The extensive sensor suite includes various sensor categories, including multiple Inertial Measurement Units (IMUs) and cameras. Sensor data is made available as unprocessed measurements and each dataset provides highly accurate ground truth, including the outdoor experiments where a dual Real-Time Kinematic (RTK) Global Navigation Satellite System (GNSS) setup provides sub-degree and centimeter accuracy (1-sigma). The sensor suite also includes a dedicated high-rate IMU to capture all the vibration dynamics of the vehicle during flight to support research on novel machine learning-based sensor signal enhancement methods for improved localization. The datasets and post-processing tools are available at: https://sst.aau.at/cns/datasets/insane-dataset/
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INSANE 数据集:用于火星模拟、室外和室外/室内过渡场景中具有挑战性的无人机飞行的大量传感器
在现实世界的应用中,自主移动机器人平台必须能够在多种不同的动态环境中安全导航,而准确、稳健的定位是关键的先决条件。为了支持该领域的进一步研究,我们推出了 INSANE 数据集(用于开发先进和新颖估计器的传感器数量增加)--一个用于跨环境定位的多功能微型飞行器(MAV)数据集。这些数据集为定位方法提供了具有多阶段难度的各种场景。这些场景包括在室内运动捕捉设施的受控环境中的轨迹,飞行器在室外执行机动动作并过渡到建筑物的实验(需要改变传感器模式),以及在具有挑战性的火星模拟环境中的纯室外飞行动作,以模拟当前和未来的火星直升机需要执行的场景。所介绍的工作旨在提供反映真实世界场景和传感器效果的数据。广泛的传感器套件包括各种传感器类别,包括多个惯性测量单元(IMU)和摄像头。传感器数据以未处理测量值的形式提供,每个数据集都提供了高精度的地面实况,包括室外实验,在室外实验中,双实时运动学(RTK)全球导航卫星系统(GNSS)设置提供了亚度和厘米精度(1-sigma)。传感器套件还包括一个专用的高速率 IMU,用于捕捉飞行器在飞行过程中的所有振动动态,以支持研究基于机器学习的新型传感器信号增强方法,从而改进定位。数据集和后处理工具可在以下网址获取: https://sst.aau.at/cns/datasets/insane-dataset/
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