缩小
匹配(统计)
计算机科学
算法
图像配准
趋同(经济学)
人工智能
失真(音乐)
点集注册
公制(单位)
稳健性(进化)
差异(会计)
二次方程
功能(生物学)
迭代最近点
点云
模式识别(心理学)
点(几何)
计算机视觉
数学优化
数学
自适应滤波器
稳健统计
算法设计
Blossom算法
干扰(通信)
最佳匹配
自适应算法
迭代法
水准点(测量)
近似算法
权函数
二次函数
作者
Hao Wu,Hongdi Liu,Tao Ding,Lin Hua,Dahu Zhu
标识
DOI:10.1109/tpami.2025.3625992
摘要
Robust rigid point cloud registration is effective for accurate positioning and measurement of complex components. The existing registration algorithms, however, fail to overcome the matching distortion caused by structural deviation, unknown abnormal allowance, and various measurement inherent defects. Although the recently proposed VMM and WPMAVM algorithms can inhibit the matching distortion to some extent, they still fail in the presence of numerous abnormal points. In this study, we present a progressive and adaptive variance minimization (PAVM) algorithm to address these issues. A progressive de-pseudo weight is established to ensure the involvement of all point pairs in optimization at the initial registration stage. Then, an approximately truncated weight function is employed to mitigate the influence of abnormal points on registration results. Furthermore, a novel adaptive coordination distance function is established by improving the symmetric point-to-plane distance metric and combining the first-order approximate point-to-point distance metric, which enhances the algorithm speed and stability. The analysis investigates the anti-abnormal interference ability and quadratic convergence, validating the feasibility of the PAVM algorithm. Experiments are undertaken to illustrate the notable benefits of our algorithm in convergence stability, matching speed, and universality. These attributes render the algorithm well-suited for registration tasks involving diverse complex components.
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