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SpoxelNet: Spherical Voxel-based Deep Place Recognition for 3D Point Clouds of Crowded Indoor Spaces

机译:Spoxelnet:球形体素的深度识别拥挤室内空间的3D点云

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With its essential role in achieving full autonomy of robot navigation, place recognition has been widely studied with various approaches. Recently, numerous point cloud-based methods with deep learning implementation have been proposed with promising results for their application in outdoor environments. However, their performances are not as promising in indoor spaces because of the high level of occlusion caused by structures and moving objects. In this paper, we propose a point cloud-based place recognition method for crowded indoor spaces. The method consists of voxelizing point clouds in spherical coordinates and defining the occupancy of each voxel in ternary values. We also present SpoxelNet, a neural network architecture that encodes input voxels into global descriptor vectors by extracting the structural features in both fine and coarse scales. It also reinforces its performance in occluded places by concatenating feature vectors from multiple directions. Our method is evaluated in various indoor datasets and outperforms existing methods with a large margin.
机译:凭借其在实现机器人导航充分自治方面的基本作用,识别识别已被广泛研究各种方法。最近,已经提出了许多基于云的基于云的方法,并提出了在室外环境中的应用程序的有希望的结果。然而,由于结构和移动物体引起的高水平闭塞,它们的性能并不在室内空间中承诺。在本文中,我们提出了一种基于点云的地方识别方法,适用于拥挤的室内空间。该方法包括球形坐标中的体曲线云并定义了三元值中每个体素的占用。我们还通过提取良好和粗略尺度的结构特征,将Spoxelnet提供将输入体素编码为全局描述符向量的神经网络架构。它还通过从多个方向连接特征向量来加强其在遮挡位置的性能。我们的方法在各种室内数据集中进行评估,并优于具有大边距的现有方法。

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