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Image Based Quality Inspection in Smart Manufacturing Systems: A Literature Review

机译:智能制造系统中基于图像的质量检验:文献综述

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Quality inspection is an important component of today’s smart manufacturing systems (SMS). Their prominence stems from the objective of manufacturing companies to i) deliver high-quality products, ii) inspire brand loyalty, iii) keep within regulations, and iv) minimize waste of resources (incl. such as employee and machine time, scrap materials) to maximize profit. There is a wide variety of quality inspection systems deployed on the shop floor utilizing different technologies, ranging from human operators to high-fidelity sensor systems to image based systems. In this work we focus on the latter, modern image-based quality inspection systems and processes. Vision based quality inspection has seen an increase in applications and academic attention over the past decade, aligned with the dawn of Industry 4.0. On the one hand, digital camera systems (including the optics, sensors, and connectivity) have become more powerful and at the same time more affordable. On the other hand, the analytics – namely artificial intelligence and machine learning algorithms – have made tremendous advancements in terms of results as well as accessibility. Most notably, deep neural networks and deep learning have elevated the potential of computer vision in quality inspection applications to the next level. In this paper, we will conduct a comprehensive literature review analysing image based quality inspection systems in SMS over the last decade. We will focus particularly on the question of how image based in-situ quality inspection of three-dimensional parts is currently conducted. The results will provide an overview of the different available image based quality inspection approaches, their benefits and challenges, as well as specific application areas and/or industries.
机译:质量检验是当今智能制造系统(SMS)的重要组成部分。他们的突出源于制造公司的目标,即i)提供高质量的产品,ii)激发品牌忠诚度,iii)在法规内保持在规定内,而iv)最大限度地减少资源浪费(包括员工和机器时间,废料等。最大化利润。在商店地板上有各种质量检测系统,利用不同的技术,从人类运营商到高保真传感器系统到基于图像的系统。在这项工作中,我们专注于后者,现代的基于形象的质量检测系统和流程。基于视觉的质量检验在过去十年中,应用和学术关注的增加,与工业4.0黎明一致。一方面,数码相机系统(包括光学,传感器和连接)已经变得更加强大,同时更实惠。另一方面,分析 - 即人工智能和机器学习算法 - 在结果方面具有巨大的进步以及可访问性。最值得注意的是,深度神经网络和深度学习升高了在保质检验应用中计算机视觉的潜力到一个新的水平。在本文中,我们将在过去十年中进行全面的文献综述分析SMS中SMS的图像质量检测系统。我们将特别关注目前对三维零件的原位质量检验的应用方式的问题。结果将概述基于可用的可用图像的质量检验方法,他们的利益和挑战,以及特定的应用领域和/或行业。

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