Novel 3D local feature descriptor of point clouds based on spatial voxel homogenization for feature matching.

IF 3.2 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Visual Computing for Industry Biomedicine and Art Pub Date : 2023-09-28 DOI:10.1186/s42492-023-00145-4
Jiong Yang, Jian Zhang, Zhengyang Cai, Dongyang Fang
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Abstract

Obtaining a 3D feature description with high descriptiveness and robustness under complicated nuisances is a significant and challenging task in 3D feature matching. This paper proposes a novel feature description consisting of a stable local reference frame (LRF) and a feature descriptor based on local spatial voxels. First, an improved LRF was designed by incorporating distance weights into Z- and X-axis calculations. Subsequently, based on the LRF and voxel segmentation, a feature descriptor based on voxel homogenization was proposed. Moreover, uniform segmentation of cube voxels was performed, considering the eigenvalues of each voxel and its neighboring voxels, thereby enhancing the stability of the description. The performance of the descriptor was strictly tested and evaluated on three public datasets, which exhibited high descriptiveness, robustness, and superior performance compared with other current methods. Furthermore, the descriptor was applied to a 3D registration trial, and the results demonstrated the reliability of our approach.

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一种新的基于空间体素均匀化的点云三维局部特征描述符用于特征匹配。
在复杂干扰下获得具有高描述性和鲁棒性的三维特征描述是三维特征匹配中一项重要而富有挑战性的任务。本文提出了一种新的特征描述方法,该方法由稳定的局部参考框架和基于局部空间体素的特征描述符组成。首先,通过将距离权重纳入Z轴和X轴计算,设计了一种改进的LRF。随后,在LRF和体素分割的基础上,提出了一种基于体素均匀化的特征描述符。此外,考虑到每个体素及其相邻体素的特征值,对立方体体素进行了均匀分割,从而提高了描述的稳定性。该描述符的性能在三个公共数据集上进行了严格的测试和评估,与当前的其他方法相比,这些数据集具有较高的描述性、鲁棒性和优越的性能。此外,将描述符应用于3D配准试验,结果证明了我们方法的可靠性。
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