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Self-calibration and visual SLAM with a multi-camera system on a micro aerial vehicle

机译:微型飞行器上具有多摄像头系统的自校准和可视SLAM

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The use of a multi-camera system enables a robot to obtain a surround view, and thus, maximize its perceptual awareness of its environment. If vision-based simultaneous localization and mapping (vSLAM) is expected to provide reliable pose estimates for a micro aerial vehicle (MAV) with a multi-camera system, an accurate calibration of the multi-camera system is a necessary prerequisite. We propose a novel vSLAM-based self-calibration method for a multi-camera system that includes at least one calibrated stereo camera, and an arbitrary number of monocular cameras. We assume overlapping fields of view to only exist within stereo cameras. Our self-calibration estimates the inter-camera transforms with metric scale; metric scale is inferred from calibrated stereo. On our MAV, we set up each camera pair in a stereo configuration which facilitates the estimation of the MAV's pose with metric scale. Once the MAV is calibrated, the MAV is able to estimate its global pose via a multi-camera vSLAM implementation based on the generalized camera model. We propose a novel minimal and linear 3-point algorithm that uses relative rotation angle measurements from a 3-axis gyroscope to recover the relative motion of the MAV with metric scale and from 2D-2D feature correspondences. This relative motion estimation does not involve scene point triangulation. Our constant-time vSLAM implementation with loop closures runs on-board the MAV in real-time. To the best of our knowledge, no published work has demonstrated real-time on-board vSLAM with loop closures. We show experimental results from simulation experiments, and real-world experiments in both indoor and outdoor environments.
机译:多摄像机系统的使用使机器人能够获得周围的视野,从而最大程度地感知周围环境。如果期望基于视觉的同时定位和制图(vSLAM)为具有多摄像机系统的微型飞行器(MAV)提供可靠的姿态估计,则对多摄像机系统进行准确校准是必要的先决条件。我们提出了一种新颖的基于vSLAM的多相机系统自校准方法,该系统包括至少一个校准的立体相机和任意数量的单眼相机。我们假设重叠的视场仅存在于立体摄像机中。我们的自校准功能可以通过公制尺度估计摄像机之间的变换;公制比例从校准的立体声中推断出来。在我们的MAV上,我们将每个摄像机对设置为立体声配置,这有助于以公制尺度估算MAV的姿势。一旦对MAV进行了校准,MAV便可以基于通用摄像机模型通过多摄像机vSLAM实现来估计其全局姿态。我们提出了一种新颖的最小线性三点算法,该算法使用来自三轴陀螺仪的相对旋转角度测量值来恢复公制比例尺和2D-2D特征对应的MAV相对运动。此相对运动估计不涉及场景点三角剖分。我们具有循环闭合功能的恒定时间vSLAM实现在MAV板上实时运行。据我们所知,尚无已发表的作品展示具有闭环功能的实时板载vSLAM。我们展示了来自模拟实验的实验结果,以及室内和室外环境中的实际实验。

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