结构化和非结构化数据表面重构技术综述

C. C. You, Seng Poh Lim, Seng Chee Lim, Joi San Tan, Chen Kang Lee, Y. Khaw
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引用次数: 14

摘要

真实物体的表面重建是逆向工程中一个经常讨论的话题。通常采用三维扫描技术对物体进行多角度扫描,并用点云表示。点云可以是结构化的,也可以是非结构化的,其中可能包含噪声、离群点和不完整点等问题。当点云不包含任何相邻点之间的连通性信息和结构信息时,被认为是非结构化形式。为了克服点云问题和现有技术的局限性,提出了各种类型的表面重建技术。此外,还采用了软计算技术来提高性能并克服现有技术的缺点。因此,本文的目的是对现有的结构化和非结构化数据表面重建技术进行综述。一般来说,本文将只关注插值和近似技术、基于学习的技术和软计算技术。基于分析,它表明基于学习的技术比其他技术表现更好,因为它们能够处理非结构化点云的问题。它也可以与其他技术相结合形成混合技术,从而提高其准确性。本文的研究结果可以帮助研究人员理解和寻找合适的表面重建技术来表示对象和解决他们的案例研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey on Surface Reconstruction Techniques for Structured and Unstructured Data
Surface reconstruction of real-world objects is a commonly discussed topic in reverse engineering. Generally, 3-D scanning technologies are used to scan the objects through multiple angles and represent them using point cloud. The point cloud can be either in structured or unstructured form which may contain problems such as noise, outliers and incomplete points. The point cloud is considered as unstructured form when it does not contain any connectivity information between adjacent points and structure information. Various types of surface reconstruction techniques are proposed to overcome the problems of point cloud and the limitations of existing techniques. Besides, soft computing techniques are also employed to enhance the performance and overcome the downsides of existing techniques. Therefore, the objective of this paper is to conduct a survey towards the existing techniques in the surface reconstruction on structured or unstructured data. Generally, this paper will only focus on the interpolation and approximation techniques, learning-based techniques, and soft computing techniques. Based on the analysis, it shows that learning-based techniques performed better compared to other techniques as they are able to handle the problem of unstructured point clouds. It can also form as hybrid techniques by integrating with other techniques which can improve its accuracy. The outcome of this paper can be used to assist the researchers in understanding and finding suitable surface reconstruction techniques in representing the objects and solving their case studies.
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