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Invariant Kalman filter application to optical flow based visual odometry for UAVs

机译:不变卡尔曼滤波器在无人机基于光流的视觉测距中的应用

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Optical flow based visual odometry for UAVs has become akin to wheel encoders for ground based robots. While sensors such as laser rangefinders and Global Positioning System (GPS) receivers can provide measurements of a UAV's position, these sensors typically have a low bandwidth and can become degraded (e.g. GPS in urban canyons). Optical flow sensors provide a robust high bandwidth pseudo-velocity measurement by tracking the movement of a feature through a camera image and measuring the distance to that feature, typically using a sonar or a lidar sensor. Optical flow based visual odometry thus compliments low bandwidth UAV position measurements. We have previously used a simple linear measurement equation to approximate the optical flow as a pseudo-velocity measurement and were able to achieve fully autonomous mission flights without GPS both indoors and outdoors. This estimator, known as Local Position Estimator (LPE), is now part of the open source PX4 autopilot. In this work, we seek to improve the UAV's performance in terms of maximum speed and robustness by deriving an estimator using the full nonlinear measurement equations and by basing the estimator on the Invariant Extended Kalman Filter (IEKF). Through intelligent choice of the frame in which the estimator dynamics and measurement equations are linearized, the IEKF is able to reduce the fluctuations in the Kalman filter along typical vehicle trajectories and produce a more optimal estimate. We compare our previous algorithm, LPE, with our new algorithm, IEKF, using the PX4 gazebo based software in the loop simulator.
机译:用于无人机的基于光流的视觉测距法已经类似于用于地面机器人的轮式编码器。尽管诸如激光测距仪和全球定位系统(GPS)接收器之类的传感器可以提供无人机位置的测量值,但这些传感器通常带宽较低,并且可能会退化(例如,城市峡谷中的GPS)。光流量传感器通常通过使用声纳或激光雷达传感器,通过跟踪摄像机图像中某个特征的运动并测量到该特征的距离,来提供可靠的高带宽伪速度测量。因此,基于光流的视觉测距法补充了低带宽无人机的位置测量。我们以前使用简单的线性测量方程式将光流近似为伪速度测量值,并且能够在室内和室外都无需GPS的情况下实现完全自主的任务飞行。现在,该估计器称为本地位置估计器(LPE),它是开源PX4自动驾驶仪的一部分。在这项工作中,我们力求通过使用完整的非线性测量方程推导估算器并将估算器基于不变扩展卡尔曼滤波器(IEKF)来提高无人飞行器在最大速度和鲁棒性方面的性能。通过智能地选择将估算器动力学和测量方程线性化的框架,IEKF能够减少沿典型车辆轨迹的卡尔曼滤波器的波动,并产生更优化的估算。我们在环路模拟器中使用基于PX4凉亭的软件,将以前的算法LPE与新算法IEKF进行了比较。

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