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Pose Estimation of a Mobile Robot Based on Fusion of IMU Data and Vision Data Using an Extended Kalman Filter

机译:基于IMU数据和视觉数据融合的扩展卡尔曼滤波器的移动机器人姿态估计

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Using a single sensor to determine the pose estimation of a device cannot give accurate results. This paper presents a fusion of an inertial sensor of six degrees of freedom (6-DoF) which comprises the 3-axis of an accelerometer and the 3-axis of a gyroscope, and a vision to determine a low-cost and accurate position for an autonomous mobile robot. For vision, a monocular vision-based object detection algorithm speeded-up robust feature (SURF) and random sample consensus (RANSAC) algorithms were integrated and used to recognize a sample object in several images taken. As against the conventional method that depend on point-tracking, RANSAC uses an iterative method to estimate the parameters of a mathematical model from a set of captured data which contains outliers. With SURF and RANSAC, improved accuracy is certain; this is because of their ability to find interest points (features) under different viewing conditions using a Hessain matrix. This approach is proposed because of its simple implementation, low cost, and improved accuracy. With an extended Kalman filter (EKF), data from inertial sensors and a camera were fused to estimate the position and orientation of the mobile robot. All these sensors were mounted on the mobile robot to obtain an accurate localization. An indoor experiment was carried out to validate and evaluate the performance. Experimental results show that the proposed method is fast in computation, reliable and robust, and can be considered for practical applications. The performance of the experiments was verified by the ground truth data and root mean square errors (RMSEs).
机译:使用单个传感器确定设备的姿态估计无法给出准确的结果。本文提出了一种六自由度(6-DoF)惯性传感器的融合技术,该技术包括加速度计的3轴和陀螺仪的3轴,以及一种确定低成本且精确位置的视觉系统自主移动机器人。对于视觉,集成了基于单眼视觉的物体检测算法,快速鲁棒特征(SURF)和随机样本一致性(RANSAC)算法,用于识别拍摄的多个图像中的样本对象。与传统的依赖点跟踪的方法不同,RANSAC使用迭代方法从一组包含异常值的捕获数据中估算数学模型的参数。使用SURF和RANSAC,可以确保提高的准确性。这是因为它们能够使用Hessain矩阵在不同的观看条件下找到兴趣点(特征)。之所以提出这种方法,是因为其实施简单,成本低廉且提高了准确性。使用扩展的卡尔曼滤波器(EKF),将来自惯性传感器和相机的数据融合在一起,以估算移动机器人的位置和方向。所有这些传感器都安装在移动机器人上以获得准确的定位。进行了室内实验以验证和评估性能。实验结果表明,该方法计算速度快,可靠性高,鲁棒性强,可为实际应用提供参考。实验的性能已通过地面真实数据和均方根误差(RMSE)进行了验证。

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