Real-time wide-angle stereo visual SLAM on large environments using SIFT features correction

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引用次数: 17

Abstract

This paper presents a new method for real-time SLAM calculation applied to autonomous robot navigation in large environments without restrictions. It is exclusively based on the information provided by a cheap wide-angle stereo camera. Our approach divide the global map into local sub- maps identified by the so-called SIFT fingerprint. At the sub- map level (low level SLAM), 3D sequential mapping of natural land-marks and the robot location/orientation are obtained using a top-down Bayesian method to model the dynamic behavior. A high abstraction level to reduce the global accumulated drift, keeping real-time constraints, has been added (high level SLAM). This uses a SIFT correction method based on the sub-maps' fingerprints. A comparison of the low SLAM level using our method and SIFT features has been carried out. Some experimental results using a real large environment are presented.
基于SIFT特征校正的大环境下实时广角立体视觉SLAM
提出了一种应用于无约束大环境下自主机器人导航的实时SLAM计算方法。它完全基于廉价的广角立体相机提供的信息。我们的方法将全局地图划分为局部子地图,由所谓的SIFT指纹识别。在子地图层面(低级SLAM),采用自顶向下的贝叶斯方法对机器人的动态行为进行建模,获得了自然地标和机器人位置/方向的三维序列地图。添加了一个高抽象级别来减少全局累积漂移,同时保持实时约束(高级SLAM)。采用基于子地图指纹的SIFT校正方法。利用我们的方法和SIFT特征对低SLAM水平进行了比较。给出了在实际大环境下的一些实验结果。
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