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Local voxelized structure for 3D binary feature representation and robust registration of point clouds from low-cost sensors

机译:用于3D二进制特征表示的局部体兴结构和来自低成本传感器的点云的强大注册

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摘要

Local feature-based 3D point cloud registration is a central issue in the fields of 3D computer vision and robotics, and most previously proposed 3D local features are real-valued. In this paper (1) a novel binary descriptor named local voxelized structure (LoVS) for 3D local shape description and (2) a LoVS-based registration algorithm for low-quality, e.g., Kinect-captured, point clouds are proposed. LoVS simply encodes the local shape structure represented by point clouds into bit string using point spatial locations without computing complex geometric attributes, such as normals and curvature, at the feature representation stage. Specifically, the LoVS descriptor is extracted within a local cubic volume around the keypoint. The orientation of the cubic volume is determined by a local reference frame (LRF) to achieve rotation invariance. Then, the cubic volume is uniformly split into a set of voxels. A voxel is labeled 1 if it contains points; otherwise, 0. All the labels are integrated into the LoVS descriptor. Based on the LoVS descriptor, a robust and accurate point cloud registration algorithm was developed, which effectively handles the challenges presented by low-cost sensors, e.g., noise and varying data resolutions. Experiments and extensive comparisons on three descriptor-matching benchmarks and a large-scale Kinect point cloud registration dataset show the effectiveness and the over-all superiority of our proposed LoVS descriptor and LoVS-based point cloud registration algorithm. (C) 2018 Elsevier Inc. All rights reserved.
机译:基于本地特征的3D点云注册是3D计算机视觉和机器人字段中的核心问题,最先前提出的3D本地功能是真实值的。在本文中(1)一个新的二进制描述符,名为局部虚拟化结构(Lovs),用于3D局部形状描述和(2)基于Levs的低质量登记算法,例如,提出了Kinect捕获的点云。 Lovs简单地编码点云表示的本地形状结构,使用点空间位置表示位字符串,而不计算特征表示阶段的复杂几何属性,例如法线和曲率。具体地,Lovs描述符在键盘周围的本地立方体积内提取。立方体积的取向由本地参考帧(LRF)确定,以实现旋转不变性。然后,立方体积均匀地分成一组体素。如果包含积分,则标有体素;否则,0.所有标签都集成到Lovs描述符中。基于LOVS描述符,开发了一种强大和准确的点云登记算法,其有效地处理低成本传感器,例如噪声和不同数据分辨率所呈现的挑战。在三个描述符匹配基准和大型Kinect Point云登记数据集上的实验和广泛的比较显示了我们所提出的Lovs描述符和基于Lovs的点云登记算法的有效性和过度优势。 (c)2018年Elsevier Inc.保留所有权利。

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