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Localization through fusion of discrete and continuous epipolar geometry with wheel and IMU odometry

机译:通过将离散和连续对极几何与车轮和IMU里程表融合来进行本地化

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This paper describes a novel sensor fusion implementation to improve the accuracy of robot localization by combining multiple visual odometry approaches with wheel and IMU odometry. Discrete and continuous Homography Matrices are used to recover position, orientation, and velocity from image sequences of tracked feature points. An Inertial Measurement Unit (IMU) and wheel encoders also measure linear and angular velocity of mobile robot. A Kalman filter fuses the measurements from the visual and inertial measurement systems. Time varying matrices in the Kalman filter allow each sensor to receive higher or lower weight in situations where each is more or less accurate. Experiments are performed with a camera and a IMU (Wiimote controller) mounted on a mobile robot.
机译:本文介绍了一种新颖的传感器融合实现,可通过将多种视觉测距方法与车轮和IMU测距相结合来提高机器人定位的准确性。离散连续Homoography矩阵用于从跟踪的特征点的图像序列中恢复位置,方向和速度。惯性测量单元(IMU)和车轮编码器还可以测量移动机器人的线速度和角速度。卡尔曼滤波器融合了视觉和惯性测量系统的测量结果。卡尔曼滤波器中随时间变化的矩阵使每个传感器在或多或少准确的情况下可以承受更高或更低的重量。使用安装在移动机器人上的相机和IMU(Wiimote控制器)进行实验。

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