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首页> 外文期刊>Automation Science and Engineering, IEEE Transactions on >Monocular Visual–Inertial State Estimation With Online Initialization and Camera–IMU Extrinsic Calibration
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Monocular Visual–Inertial State Estimation With Online Initialization and Camera–IMU Extrinsic Calibration

机译:在线初始化和相机IMU外在校准的单目视觉惯性状态估计

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摘要

There have been increasing demands for developing microaerial vehicles with vision-based autonomy for search and rescue missions in complex environments. In particular, the monocular visual-inertial system (VINS), which consists of only an inertial measurement unit (IMU) and a camera, forms a great lightweight sensor suite due to its low weight and small footprint. In this paper, we address two challenges for rapid deployment of monocular VINS: 1) the initialization problem and 2) the calibration problem. We propose a methodology that is able to initialize velocity, gravity, visual scale, and camera-IMU extrinsic calibration on the fly. Our approach operates in natural environments and does not use any artificial markers. It also does not require any prior knowledge about the mechanical configuration of the system. It is a significant step toward plug-and-play and highly customizable visual navigation for mobile robots. We show through online experiments that our method leads to accurate calibration of camera-IMU transformation, with errors less than 0.02 m in translation and 1° in rotation. We compare out method with a state-of-the-art marker-based offline calibration method and show superior results. We also demonstrate the performance of the proposed approach in large-scale indoor and outdoor experiments.
机译:对于在复杂环境中进行搜索和救援任务的具有基于视觉的自主权的微型航空器的需求不断增长。特别是,仅由惯性测量单元(IMU)和照相机组成的单眼视觉惯性系统(VINS)由于重量轻,占地面积小而构成了轻巧的传感器套件。在本文中,我们解决了快速部署单眼VINS的两个挑战:1)初始化问题和2)校准问题。我们提出了一种能够即时初始化速度,重力,视觉比例和相机-IMU外在校准的方法。我们的方法在自然环境中运行,不使用任何人工标记。它还不需要有关系统机械配置的任何先验知识。这是迈向移动机器人即插即用和高度可定制的视觉导航的重要一步。我们通过在线实验表明,我们的方法可精确校准相机-IMU变换,平移误差小于0.02 m,旋转误差小于1°。我们将这种方法与基于最新标记的离线校准方法进行比较,并显示出优异的结果。我们还演示了该方法在大型室内和室外实验中的性能。

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