基于原位点云处理的增材制造表面监测

Lequn Chen, X. Yao, Peng Xu, S. K. Moon, G. Bi
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引用次数: 8

摘要

在增材制造(AM)过程中,基于视觉的表面监测对于表面缺陷和几何畸变检测至关重要。保持和提高增材制造零件的质量是质量保证和过程控制的前提。然而,目前的表面监测解决方案不够高效,无法在相对较长的增材制造过程中提供现场监测反馈,这已成为增材制造自动化的重大障碍。本文提出了一种集成在机器人激光辅助增材制造单元中的表面监测新方法,该方法具有原位点云处理能力。在表面扫描过程中,采用多处理技术来运行传感器数据捕获和点云处理程序。在预定义的时间间隔内捕获的点云数据进行自动过滤和分割,以提取待监控的部件表面。实验结果验证了所提地表监测方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surface Monitoring for Additive Manufacturing with in-situ Point Cloud Processing
Vision-based surface monitoring is critical for surface defects and geometric distortion detection during additive manufacturing (AM) processes. It is the pre-requisite of quality assurance and process control to maintain and improve the quality of AM produced parts. However, current surface monitoring solutions are not efficient enough to provide in-situ monitoring feedback during the relatively long AM fabrication process, which has become a significant barrier to AM automation. This paper presents a new surface monitoring method integrated in a robot-based laser-aided additive manufacturing cell, with in-situ point cloud processing capability. During surface scanning, a multiprocessing technique is used to run both sensor data capturing and point cloud processing programs. Point cloud data captured within predefined time intervals are filtered and segmented automatically to extract the parts surface to be monitored. Experimental results are presented to verify the effectiveness of the proposed surface monitoring method.
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