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Efficient approach for Binocular Vision-SLAM

机译:双筒望远镜 - Slam的有效方法

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This paper presents an approach to binocular vision simultaneous localization and mapping (SLAM). SIFT (Scale Invariant Feature Transform) algorithm is used to extract the Natural landmarks. But SIFT algorithm is complicated and computation time is long. Firstly, the linear combination of cityblock distance and chessboard distance is comparability measurement; secondly, partial features are used to matching. SLAM is completed by fusing the information of SIFT features and robot information with EKF. Mahalanobisis distance is used in data association which solve the problem that the scale of data association increase with the map grows in process of SLAM .The simulation experiment indicate that the proposed method reduce computational complexity, and with high localization precision in indoor environments.
机译:本文介绍了双目视觉同时定位和映射(SLAM)的方法。 SIFT(SCALE不变特征变换)算法用于提取自然地标。但SIFT算法复杂,计算时间很长。首先,CityBlock距离和棋盘距离的线性组合是可比性测量;其次,部分特征用于匹配。通过使用EKF融合SIFT功能和机器人信息的信息来完成SLAM。 Mahalanobisis距离用于数据关联,解决了数据关联的规模与地图增加了Slam的过程。模拟实验表明,该方法降低了室内环境中的计算复杂度,并具有高本地化精度。

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