基于虚实混合点云数据和语义分割的增材制造三维尺寸估计新方法

IF 3.5 2区 工程技术 Q2 ENGINEERING, MANUFACTURING
Shuo Shan, Hans Nørgaard Hansen, Yang Zhang, Matteo Calaon
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引用次数: 0

摘要

增材制造(AM)技术的进步,在赋予复杂结构制造能力的同时,也增加了对相应测量技术的需求。虽然3D扫描和重建已被用于增材制造的质量检测,但扫描结果与具体尺寸之间仍然存在差距,阻碍了增材制造过程向更高精度和速度的发展。针对增材制造部件与尺寸特征之间的差距,提出了一种从增材制造对象的点云中估计预定尺寸的新方法。在语义分割和后处理计算的基础上,对混合数据和下采样进行了应用和评价。与三坐标测量机(CMM)测量结果的对比表明,本文提出的方法大大缩短了测量时间,简化了测量过程,在保持高精度的同时,将计算时间减少到原来的12%。当使用虚拟数据混合数据集时,分割精度可达89%。对所提方法的测量不确定度进行了量化,确认了测量不确定度的主要影响因素来自于扫描仪器,验证了所提方法的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel 3D dimension estimation approach in additive manufacturing based on virtual-real hybrid point cloud data and semantic segmentations
The advancements in additive manufacturing (AM) technology, while empowering the manufacturing of complex structures, have also increased the demand for corresponding measurement techniques. While 3D scanning and reconstruction have been employed for quality inspection in AM, there remains a gap between scan results and specific dimensions, hindering the progress of AM processes toward greater precision and speed. Aiming to bridge the gap between AM components and dimensional features, this paper introduces a novel method to estimate pre-defined dimensions from point cloud of AM objects. Building upon the foundation of semantic segmentation and post-processing calculations, hybrid data and down sampling are applied and evaluated. Comparisons with Coordinate Measuring Machine (CMM) measurements confirm that the proposed method in this paper significantly reduces measurement time and simplifies the measurement process, cutting the computation time down to 12 % of the original while maintaining high accuracy. The segmentation accuracy can reach 89 % when using a hybrid dataset with virtual data. The measurement uncertainty of the proposed method is quantified, confirming that the dominant contributor to the measurement uncertainty comes from the scanning instrument, validating the reliability of the proposed method.
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来源期刊
CiteScore
7.40
自引率
5.60%
发文量
177
审稿时长
46 days
期刊介绍: Precision Engineering - Journal of the International Societies for Precision Engineering and Nanotechnology is devoted to the multidisciplinary study and practice of high accuracy engineering, metrology, and manufacturing. The journal takes an integrated approach to all subjects related to research, design, manufacture, performance validation, and application of high precision machines, instruments, and components, including fundamental and applied research and development in manufacturing processes, fabrication technology, and advanced measurement science. The scope includes precision-engineered systems and supporting metrology over the full range of length scales, from atom-based nanotechnology and advanced lithographic technology to large-scale systems, including optical and radio telescopes and macrometrology.
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