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首页> 外文期刊>Information Sciences: An International Journal >Combining visual features and Growing Neural Gas networks for robotic 3D SLAM
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Combining visual features and Growing Neural Gas networks for robotic 3D SLAM

机译:结合视觉特征和不断发展的神经网络来实现机器人3D SLAM

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摘要

The use of 3D data in mobile robotics provides valuable information about the robot's environment. Traditionally, stereo cameras have been used as a low-cost 3D sensor. However, the lack of precision and texture for some surfaces suggests that the use of other 3D sensors could be more suitable. In this work, we examine the use of two sensors: an infrared SR4000 and a Kinect camera. We use a combination of 3D data obtained by these cameras, along with features obtained from 2D images acquired from these cameras, using a Growing Neural Gas (GNG) network applied to the 3D data. The goal is to obtain a robust egomotion technique. The GNG network is used to reduce the camera error. To calculate the egomotion, we test two methods for 3D registration. One is based on an iterative closest points algorithm, and the other employs random sample consensus. Finally, a simultaneous localization and mapping method is applied to the complete sequence to reduce the global error. The error from each sensor and the mapping results from the proposed method are examined.
机译:在移动机器人中使用3D数据可提供有关机器人环境的宝贵信息。传统上,立体声相机已被用作低成本3D传感器。但是,某些表面缺少精度和纹理,这表明使用其他3D传感器可能更合适。在这项工作中,我们研究了两种传感器的使用:红外SR4000和Kinect相机。我们使用由这些摄像机获取的3D数据以及从这些摄像机获取的2D图像获得的特征的组合,并使用应用于3D数据的神经网络(GNG)网络。目的是获得强大的自我运动技术。 GNG网络用于减少相机错误。为了计算自我运动,我们测试了两种3D配准方法。一种基于迭代最近点算法,另一种采用随机样本共识。最后,将同时定位和映射方法应用于完整序列以减少全局误差。检查每个传感器的误差和所提出方法的映射结果。

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