为部分点云注册构建多样的离层一致性

Yu-Xin Zhang;Jie Gui;James Tin-Yau Kwok
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引用次数: 0

摘要

局部点云注册的目的是将局部扫描对齐到一个共享坐标系中。虽然基于学习的部分点云注册方法取得了显著进展,但它们往往无法充分利用点云内部和点云之间的相对位置关系。这种疏忽妨碍了它们准确识别重叠区域和搜索可靠对应关系的能力。为了解决这些局限性,我们提出了一种多样化离群值一致性(DIC)方法,该方法能自适应地在点云内部和点云之间嵌入可靠对应关系的位置信息。首先,设计了一个多样化离群值一致性驱动的区域感知(DICdRP)模块,该模块将所选对应点的位置信息嵌入点内云。该模块通过识别所选对应点的位置,提高所有点对重叠区域的敏感度。其次,我们还开发了一个利用点间云中相对位置的多样化离群一致性感知对应搜索(DICaCS)模块。该模块研究点间云 DIC 权重,以监督对应关系的兼容性,从而精确识别对应关系并有效过滤异常值。第三,我们在整个框架中整合了各种信息,以实现更全面、更详细的注册过程。在对象级和场景级数据集上的广泛实验证明了所提算法的卓越性能。代码见 https://github.com/yxzhang15/DIC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constructing Diverse Inlier Consistency for Partial Point Cloud Registration
Partial point cloud registration aims to align partial scans into a shared coordinate system. While learning-based partial point cloud registration methods have achieved remarkable progress, they often fail to take full advantage of the relative positional relationships both within (intra-) and between (inter-) point clouds. This oversight hampers their ability to accurately identify overlapping regions and search for reliable correspondences. To address these limitations, a diverse inlier consistency (DIC) method has been proposed that adaptively embeds the positional information of a reliable correspondence in the intra- and inter-point cloud. Firstly, a diverse inlier consistency-driven region perception (DICdRP) module is devised, which encodes the positional information of the selected correspondence within the intra-point cloud. This module enhances the sensitivity of all points to overlapping regions by recognizing the position of the selected correspondence. Secondly, a diverse inlier consistency-aware correspondence search (DICaCS) module is developed, which leverages relative positions in the inter-point cloud. This module studies an inter-point cloud DIC weight to supervise correspondence compatibility, allowing for precise identification of correspondences and effective outlier filtration. Thirdly, diverse information is integrated throughout our framework to achieve a more holistic and detailed registration process. Extensive experiments on object-level and scene-level datasets demonstrate the superior performance of the proposed algorithm. The code is available at https://github.com/yxzhang15/DIC .
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