IRobot self-localization using EKF

Shuqiang Zhao, J. Gu, Y. Ou, Wei Zhang, J. Pu, H. Peng
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引用次数: 4

Abstract

Self-Localization plays an important role in the mobile robot autonomous navigation. The Wheel Mobile robot usually contains a large number of different sensors, such as odometry, gyro, laser, camera and so on. All these sensors provide the information of robot localization and all these information should be considered for the optimal location. However, for the cost of the iRobot, we could not be equipped with a lot of sensors. We have only encoder sensor and gyro sensor. So this paper researches mobile robot localization only using odometer and gyro sensor based on Extended Kalman Filter (EKF). The method is that the iRobot fuses the messages from encoder sensor and gyro sensor by EKF theory, which can collect the errors that obtained the robot's orientation and position. The experiment results appear that the proposed self-localization method is effective and feasible.
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使用EKF的IRobot自定位
自定位在移动机器人自主导航中起着重要的作用。Wheel Mobile机器人通常包含大量不同的传感器,如里程计、陀螺仪、激光、摄像头等。所有这些传感器都提供了机器人的定位信息,这些信息都是最优定位需要考虑的因素。但是,由于iRobot的成本,我们无法配备很多传感器。我们只有编码器传感器和陀螺传感器。为此,本文研究了基于扩展卡尔曼滤波(EKF)的仅使用里程计和陀螺传感器的移动机器人定位。该方法是利用EKF理论将编码器传感器和陀螺仪传感器的信息进行融合,收集得到机器人的姿态和位置的误差。实验结果表明,所提出的自定位方法是有效可行的。
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