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Region of Interest Growing Neural Gas for Real-Time Point Cloud Processing

机译:用于神经网络的实时点云处理的感兴趣区域

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This paper proposes a real-time topological structure learning method based on concentrated/distributed sensing for a 2D/3D point cloud. First of all, we explain a modified Growing Neural Gas with Utility (GNG-U2) that can learn the topological structure of 3D space environment and color information simultaneously by using a weight vector. Next, we propose a Region Of Interest Growing Neural Gas (ROl-GNG) for realizing concentrated/distributed sensing in real-time. In ROI-GNG, the discount rates of the accumulated error and utility value are variable according to the situation. We show experimental results of the proposed method and discuss the effectiveness of the proposed method.
机译:提出了一种基于集中/分布式感知的2D / 3D点云实时拓扑结构学习方法。首先,我们介绍一种经过修改的实用实用的神经生长气体(GNG-U2),它可以通过使用权重矢量同时学习3D空间环境的拓扑结构和颜色信息。接下来,我们提出了一个感兴趣的区域生长神经气体(ROl-GNG),用于实时实现集中/分布式传感。在ROI-GNG中,累积误差和实用价值的折现率会根据情况而变化。我们展示了该方法的实验结果,并讨论了该方法的有效性。

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