论文标题
EPC:低质量点云的基于端点的零件感知曲线骨架提取
EPCS: Endpoint-based Part-aware Curve Skeleton Extraction for Low-quality Point Clouds
论文作者
论文摘要
曲线骨架是一个重要的形状描述符,已在计算机图形,机器视觉和人工智能中使用。在这项研究中,提出了针对低质量点云的基于端点的零件感知曲线骨骼(EPC)提取方法。首先提出了新型的随机中心移动(RCS)方法,用于检测点云上的端点。终点被用作将每个零件分为层的初始种子点,然后通过计算层的定向边界框(OBB)的中心点来获得骨骼点。随后,连接骨骼点,从而形成分支。此外,还提出了多矢量动量驱动(MVMD)方法来定位连接分支的接线点。由于点云上不同部分之间的形状差异,骨骼的全局拓扑最终通过删除冗余界点,使用所提出的MVMD方法重新连接某些分支,并根据拆分操作员应用插值方法来优化骨骼的全局拓扑。因此,实现了完整而光滑的曲线骨骼。将提出的EPCS方法与几种最新方法进行了比较,实验结果验证了其稳健性,有效性和效率。此外,破碎的兵马俑的点云上的骨架提取和模型分割还突出了所提出方法的实用性。
The curve skeleton is an important shape descriptor that has been utilized in various applications in computer graphics, machine vision, and artificial intelligence. In this study, the endpoint-based part-aware curve skeleton (EPCS) extraction method for low-quality point clouds is proposed. The novel random center shift (RCS) method is first proposed for detecting the endpoints on point clouds. The endpoints are used as the initial seed points for dividing each part into layers, and then the skeletal points are obtained by computing the center points of the oriented bounding box (OBB) of the layers. Subsequently, the skeletal points are connected, thus forming the branches. Furthermore, the multi-vector momentum-driven (MVMD) method is also proposed for locating the junction points that connect the branches. Due to the shape differences between different parts on point clouds, the global topology of the skeleton is finally optimized by removing the redundant junction points, re-connecting some branches using the proposed MVMD method, and applying an interpolation method based on the splitting operator. Consequently, a complete and smooth curve skeleton is achieved. The proposed EPCS method is compared with several state-of-the-art methods, and the experimental results verify its robustness, effectiveness, and efficiency. Furthermore, the skeleton extraction and model segmentation results on the point clouds of broken Terracotta also highlight the utility of the proposed method.