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Autonomous Visual Mapping and Exploration With a Micro Aerial Vehicle

机译:微型飞行器的自主视觉制图和探索

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摘要

Cameras are a natural fit for micro aerial vehicles (MAVs) due to their low weight, low power consumption, and two-dimensional field of view. However, computationally-intensive algorithms are required to infer the 3D structure of the environment from 2D image data. This requirement is made more difficult with the MAV's limited payload which only allows for one CPU board. Hence, we have to design efficient algorithms for state estimation, mapping, planning, and exploration. We implement a set of algorithms on two different vision-based MAV systems such that these algorithms enable the MAVs to map and explore unknown environments. By using both self-built and off-the-shelf systems, we show that our algorithms can be used on different platforms. All algorithms necessary for autonomous mapping and exploration run on-board the MAV. Using a front-looking stereo camera as the main sensor, we maintain a tiled octree-based 3D occupancy map. The MAV uses this map for local navigation and frontier-based exploration. In addition, we use a wall-following algorithm as an alternative exploration algorithm in open areas where frontier-based exploration under-performs. During the exploration, data is transmitted to the ground station which runs large-scale visual SLAM. We estimate the MAV's state with inertial data from an IMU together with metric velocity measurements from a custom-built optical flow sensor and pose estimates from visual odometry. We verify our approaches with experimental results, which to the best of our knowledge, demonstrate our MAVs to be the first vision-based MAVs to autonomously explore both indoor and outdoor environments.
机译:摄像机由于重量轻,功耗低和二维视野,因此非常适合微型飞机(MAV)。但是,需要大量计算算法才能从2D图像数据推断环境的3D结构。由于MAV的有效载荷有限(仅允许一块CPU板),因此使这一要求变得更加困难。因此,我们必须设计用于状态估计,映射,计划和探索的高效算法。我们在两个不同的基于视觉的MAV系统上实现了一组算法,因此这些算法使MAV能够映射和探索未知环境。通过使用自建系统和现成系统,我们证明了我们的算法可以在不同平台上使用。自主测绘和勘探所需的所有算法均在MAV上运行。使用前视立体摄像机作为主要传感器,我们维护了基于图块八叉树的3D占用图。 MAV将此地图用于本地导航和基于边界的探索。另外,在基于边界的勘探表现不佳的空旷地区,我们使用墙跟踪算法作为替代勘探算法。在探索过程中,数据被传输到运行大规模视觉SLAM的地面站。我们使用来自IMU的惯性数据以及定制光学流量传感器的公制速度测量值和视觉里程表的姿态估计值来估计MAV的状态。我们以实验结果验证了我们的方法,据我们所知,该方法证明了我们的MAV是第一个基于视觉的MAV,可以自主探索室内和室外环境。

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  • 来源
    《Journal of Field Robotics》 |2014年第4期|654-675|共22页
  • 作者单位

    Computer Vision and Geometry Lab, ETH Zuerich, Universitaetstrasse 6, 8092 Zuerich, Switzerland;

    Computer Vision and Geometry Lab, ETH Zuerich, Universitaetstrasse 6, 8092 Zuerich, Switzerland;

    Computer Vision and Geometry Lab, ETH Zuerich, Universitaetstrasse 6, 8092 Zuerich, Switzerland;

    Computer Vision and Geometry Lab, ETH Zuerich, Universitaetstrasse 6, 8092 Zuerich, Switzerland;

    Computer Vision and Geometry Lab, ETH Zuerich, Universitaetstrasse 6, 8092 Zuerich, Switzerland;

    Remote Sensing Technology, Faculty of Civil Engineering and Surveying, Technische Universitaet Muenchen, Arcisstrasse 21, 80333 Muenchen, Germany;

    Computer Vision and Geometry Lab, ETH Zuerich, Universitaetstrasse 6, 8092 Zuerich, Switzerland;

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