Features Matching based Merging of 3D Maps in Multi-Robot Systems

M. Drwiega
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引用次数: 6

Abstract

The paper focuses on the feature matching based merging of 3D maps in a multi-robot system. The presented approach works globally what means that an initial transformation is not necessary for a proper integration of maps. The only one assumption is that the maps have a common part that can be used during a features detection, description and a matching process to compute a transformation between them. Then the found initial solution is corrected by a variation of an ICP based method. The maps are stored in the octree based representation (octomaps) but during transformation estimation a point cloud representation is used as well. In addition, the presented method was verified in various experiments, both in a simulation, with Turtlebots robots and with publicly available datasets. The solution can be applied to many robotic applications such as underwater robots, aerial robots or robots equipped with manipulators. However, so far it was mostly tested in groups of wheeled robots.
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多机器人系统中基于特征匹配的三维地图合并
研究了多机器人系统中基于特征匹配的三维地图合并问题。所提出的方法在全局范围内工作,这意味着初始转换对于映射的适当集成是不必要的。唯一的假设是,在特征检测、描述和匹配过程中,地图有一个共同的部分,可以用来计算它们之间的转换。然后通过一种基于ICP的方法的变化来修正发现的初始解。映射存储在基于八叉树的表示(octomaps)中,但在转换估计期间也使用点云表示。此外,所提出的方法在各种实验中得到了验证,包括在模拟中,使用Turtlebots机器人和公开可用的数据集。该解决方案可应用于许多机器人应用,如水下机器人、空中机器人或配备操纵器的机器人。然而,到目前为止,它主要是在轮式机器人组中进行测试。
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