Wang Ji, Li Leijun, Xu Peiquan
Department of Chemical and Materials Engineering, University of Alberta, Edmonton, AB T6G 1H9, Canada.
School of Materials Science and Engineering, Shanghai University of Engineering Science, Shanghai 201620, China.
Sensors (Basel). 2023 Dec 8;23(24):9700. doi: 10.3390/s23249700.
With the rapid development of vision sensing, artificial intelligence, and robotics technology, one of the challenges we face is installing more advanced vision sensors on welding robots to achieve intelligent welding manufacturing and obtain high-quality welding components. Depth perception is one of the bottlenecks in the development of welding sensors. This review provides an assessment of active and passive sensing methods for depth perception and classifies and elaborates on the depth perception mechanisms based on monocular vision, binocular vision, and multi-view vision. It explores the principles and means of using deep learning for depth perception in robotic welding processes. Further, the application of welding robot visual perception in different industrial scenarios is summarized. Finally, the problems and countermeasures of welding robot visual perception technology are analyzed, and developments for the future are proposed. This review has analyzed a total of 2662 articles and cited 152 as references. The potential future research topics are suggested to include deep learning for object detection and recognition, transfer deep learning for welding robot adaptation, developing multi-modal sensor fusion, integrating models and hardware, and performing a comprehensive requirement analysis and system evaluation in collaboration with welding experts to design a multi-modal sensor fusion architecture.
随着视觉传感、人工智能和机器人技术的快速发展,我们面临的挑战之一是在焊接机器人上安装更先进的视觉传感器,以实现智能焊接制造并获得高质量的焊接部件。深度感知是焊接传感器发展的瓶颈之一。本文综述了用于深度感知的主动和被动传感方法,并对基于单目视觉、双目视觉和多视图视觉的深度感知机制进行了分类和阐述。探讨了在机器人焊接过程中利用深度学习进行深度感知的原理和方法。此外,总结了焊接机器人视觉感知在不同工业场景中的应用。最后,分析了焊接机器人视觉感知技术存在的问题及对策,并对未来发展提出了建议。本文共分析了2662篇文章,并引用了152篇作为参考文献。建议未来潜在的研究主题包括用于目标检测和识别的深度学习、用于焊接机器人适配的迁移深度学习、开发多模态传感器融合、集成模型和硬件,以及与焊接专家合作进行全面的需求分析和系统评估,以设计多模态传感器融合架构。