基于双目摄像机的移动机器人远程户外定位

Bo Zhou, Meng Li, K. Qian, X. Dai, Fang Fang
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引用次数: 5

摘要

本文提出了一种高效的基于立体视觉的视觉里程计算法,用于双目摄像机移动机器人的远距离户外定位问题。提出了一种改进的基于SIFT算法的特征匹配与跟踪方法。利用颜色信息有效消除错误的特征匹配,在特征匹配中采用BBF树加快搜索过程。通过检查前一帧和当前帧特征点空间位置的一致性,过滤特征跟踪算法中的错误匹配点。从而提高了匹配跟踪算法的实时性和准确性。提出了一种层次运动估计方法。首先利用最小二乘原理结合RANSAC滤波得到初始姿态估计;其次,采用两级束平差对运动估计结果进行优化。在此基础上,利用卡尔曼滤波将视觉信息与惯性导航信息进行融合,提高了整个定位系统的鲁棒性和稳定性。实验结果表明了该算法的可靠性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long-range outdoor localization of a mobile robot using a binocular camera
In this paper, an efficient stereo vision based visual odometry algorithm is proposed to solve the long-range outdoor localization problem of a mobile robot using a binocular camera. An improved method of feature matching and tracking based on SIFT algorithm is presented. The color information is used to effectively eliminate wrong feature matching, and the BBF tree is adopted to speed up the search process in the feature matching. The consistency of space position of feature points in previous and current frame is checked to filtering the wrong-matched points in the feature tracking algorithm. Hence the real-time performance and accuracy of the matching and tracking algorithm are improved. A hierarchical motion estimation method is also presented. Firstly the least squares principle combined with RANSAC filtering is employed to obtain the initial pose estimation. Secondly the two-stage bundle adjustment is used to optimize the motion estimation results. Furthermore Kalman filter is used to fuse the visual information with inertial navigation to improve the robustness and stability of overall position systems. Experimental results show the reliability and effectiveness of the proposed algorithm.
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