Using 3D GNG-based reconstruction for 6DoF egomotion

D. Viejo, J. G. Rodríguez, M. Cazorla, D. G. Méndez, Magnus Johnsson
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引用次数: 2

Abstract

Several recent works deal with 3D data in mobile robotic problems, e.g. mapping. Data come from any kind of sensor (time of flight cameras and 3D lasers) providing a huge amount of unorganized 3D data. In this paper we detail an efficient method to build complete 3D models from a Growing Neural Gas (GNG). We show that the use of GNG provides better results than other approaches. The GNG obtained is then applied to a sequence. From GNG structure, we propose to calculate planar patches and thus obtaining a fast method to compute the movement performed by a mobile robot by means of a 3D models registration algorithm. Final results of 3D mapping are also shown.
基于三维gng的6DoF自运动重建
最近的几部作品涉及移动机器人问题中的3D数据,例如地图绘制。数据来自任何类型的传感器(飞行时间相机和3D激光器),提供大量无组织的3D数据。本文详细介绍了一种利用生长神经气体(GNG)构建完整三维模型的有效方法。我们表明,使用GNG提供了比其他方法更好的结果。然后将得到的GNG应用于序列。从GNG结构出发,我们提出了平面补片的计算方法,从而通过三维模型配准算法获得了一种快速计算移动机器人运动的方法。最后给出了三维映射的最终结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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