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Multi-Sensor Orientation Tracking for a Façade-Cleaning Robot

机译:立面清洁机器人的多传感器方向跟踪

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摘要

Glass-façade-cleaning robots are an emerging class of service robots. This kind of cleaning robot is designed to operate on vertical surfaces, for which tracking the position and orientation becomes more challenging. In this article, we have presented a glass-façade-cleaning robot, , who can shift from one window panel to another like any other in the market. Due to the complexity of the panel shifting, we proposed and evaluated different methods for estimating its orientation using different kinds of sensors working together on the Robot Operating System (ROS). For this application, we used an onboard Inertial Measurement Unit (IMU), wheel encoders, a beacon-based system, Time-of-Flight (ToF) range sensors, and an external vision sensor (camera) for angular position estimation of the robot. The external camera is used to monitor the robot’s operation and to track the coordinates of two colored markers attached along the longitudinal axis of the robot to estimate its orientation angle. ToF lidar sensors are attached on both sides of the robot to detect the window frame. ToF sensors are used for calculating the distance to the window frame; differences between beam readings are used to calculate the orientation angle of the robot. Differential drive wheel encoder data are used to estimate the robot’s heading angle on a 2D façade surface. An integrated heading angle estimation is also provided by using simple fusion techniques, i.e., a complementary filter (CF) and 1D Kalman filter (KF) utilizing the IMU sensor’s raw data. The heading angle information provided by different sensory systems is then evaluated in static and dynamic tests against an off-the-shelf attitude and heading reference system (AHRS). It is observed that ToF sensors work effectively from 0 to 30 degrees, beacons have a delay up to five seconds, and the odometry error increases according to the navigation distance due to slippage and/or sliding on the glass. Among all tested orientation sensors and methods, the vision sensor scheme proved to be better, with an orientation angle error of less than 0.8 degrees for this application. The experimental results demonstrate the efficacy of our proposed techniques in this orientation tracking, which has never applied in this specific application of cleaning robots.
机译:玻璃幕墙清洁机器人是一类新兴的服务机器人。这种清洁机器人设计用于在垂直表面上操作,因此跟踪位置和方向变得更具挑战性。在本文中,我们介绍了一种玻璃幕墙清洁机器人,该机器人可以像市场上的任何其他面板一样从一种窗玻璃切换到另一种窗玻璃。由于面板移动的复杂性,我们提出并评估了使用不同类型的传感器(在机器人操作系统(ROS)上协同工作)估计其方向的不同方法。对于此应用,我们使用了板载惯性测量单元(IMU),车轮编码器,基于信标的系统,飞行时间(ToF)范围传感器和外部视觉传感器(相机)来估计机器人的角度位置。外部摄像头用于监视机器人的操作并跟踪沿机器人纵轴连接的两个彩色标记的坐标,以估计其方向角。 ToF激光雷达传感器安装在机器人的两侧,以检测窗框。 ToF传感器用于计算到窗框的距离;光束读数之间的差异用于计算机器人的方位角。差分驱动轮编码器数据用于估算机器人在2D立面上的方位角。还可以通过使用简单的融合技术(即利用IMU传感器的原始数据的互补滤波器(CF)和一维卡尔曼滤波器(KF))来提供集成的航向角估计。然后,根据现成的姿态和航向参考系统(AHRS)在静态和动态测试中评估由不同传感系统提供的航向角信息。可以看出,ToF传感器可在0到30度范围内有效工作,信标的延迟可能长达5秒钟,并且由于在玻璃上滑动和/或滑动导致的导航距离,测距误差会增加。在所有测试过的方向传感器和方法中,视觉传感器方案被证明是更好的,为此应用的方向角误差小于0.8度。实验结果证明了我们提出的技术在这种方向跟踪中的功效,而该技术从未在清洁机器人的这种特定应用中得到应用。

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