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A study of a soft computing based method for 3D scenario reconstruction

机译:基于软计算的3D场景重建方法研究

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摘要

Several recent works deal with 3D data in mobile robotic problems, e.g., mapping. Data comes from any kind of sensor (time of flight, Kinect or 3D lasers) that provide a huge amount of unorganized 3D data. In this paper we detail an efficient approach to build complete 3D models using a soft computing method, the Growing Neural Gas (GNG). As neural models deal easily with noise, imprecision, uncertainty or partial data, GNG provides better results than other approaches. The GNG obtained is then applied to a sequence. We present a comprehensive study on GNG parameters to ensure the best result at the lowest time cost. From this 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.
机译:近期的一些工作处理了移动机器人问题(例如地图绘制)中的3D数据。数据来自提供大量无序3D数据的任何类型的传感器(飞行时间,Kinect或3D激光)。在本文中,我们详细介绍了一种有效的方法,该方法可以使用软计算方法(生长神经气体(GNG))构建完整的3D模型。由于神经模型可以轻松处理噪声,不精确性,不确定性或部分数据,因此GNG提供了比其他方法更好的结果。然后将获得的GNG应用于序列。我们对GNG参数进行了全面研究,以确保以最低的时间成本获得最佳结果。从这种GNG结构中,我们建议计算平面斑块,从而获得一种快速的方法来借助3D模型配准算法来计算移动机器人执行的运动。还显示了3D映射的最终结果。

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