基于自适应实例分割的层级化跨源点云配准方法

Hierarchical Cross-Source Point Cloud Registration Method Based on Adaptive Instance Segmentation

  • 摘要: 移动智能体在运动过程中通过跨源点云配准融合不同传感器数据以获取高精度的位姿信息,过程中会面临模态间密度差异、视场重叠低等挑战。针对传统优化或深度学习方法在复杂多物体环境中难以兼顾全局一致性与局部精度的问题,提出基于自适应实例分割的层级化方法(AIS-HCSR)。该方法构建了三层级渐进框架:场景级通过自适应几何特征编码融合距离与角度特征实现初始匹配;物体级利用自适应欧式聚类分割点云实例,结合匹配传播与空间布局验证消除位置歧义;点云级通过点面残差优化与全局模态融合完成精细配准。实验在3DCSR数据集上显示,该方法召回率优于当前最优方法5.36%,尤其在多相似物体复杂场景中表现优异,为跨源点云配准提供了鲁棒方案。

     

    Abstract: During the movement of mobile agents, high-precision pose information is obtained by fusing data from different sensors through cross-source point cloud registration. However, challenges such as density differences between modalities and low field-of-view overlap are encountered in this process. To address the issue that traditional optimization or deep learning methods struggle to balance global consistency and local accuracy in complex multi-object environments, a hierarchical method based on adaptive instance segmentation (AIS-HCSR) is proposed. This method constructs a scene-object-point cloud hierarchical progressive registration framework: Firstly, at the scene level, it fuses distance and angle features through an adaptive geometric feature encoding mechanism and dynamically adjusts feature weights based on local geometric complexity to achieve initial matching across source scenes. Then, at the object level, an adaptive Euclidean clustering algorithm is introduced for point cloud instance segmentation, and an instance correspondence mechanism based on superpoint matching propagation and spatial layout consistency verification is designed to eliminate matching ambiguities in the relative positions of objects. Finally, at the point cloud level, object-level point-plane residual optimization and global modality consistency fusion are combined to achieve fine registration that retains local accuracy while ensuring global consistency.This hierarchical strategy effectively addresses the challenges of complex scenes with large density differences, partial overlaps, and similar multiple objects by integrating macroscopic structural information of the scene with microscopic geometric features of the objects, thereby enhancing the accuracy and robustness of cross-source point cloud registration.

     

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