基于深度学习的工业部件检测系统图像采集策略评价的合成数据集生成

F. Saiz, Garazi Alfaro, I. Barandiaran, Sara García, M. P. Carretero, M. Graña
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引用次数: 3

摘要

自动化视觉检测是机器视觉行业面临的一个持续挑战。面对日益苛刻的质量标准,使用一些先进的机器学习方法(如深度学习模型)来解决从人工检测系统到自动检测系统的过渡是合理的。然而,在制造业等环境中引入神经模型存在一定的缺陷或局限性。事实上,由于制造环境的恶劣条件,通常存在收集高质量数据库用于训练神经模型的限制。此外,在这种情况下,无缺陷和有缺陷样品之间的不平衡是非常常见的问题。为了缓解这些问题,本工作提出了一个管道,从工业部件的CAD模型生成渲染图像,随后馈送基于深度学习的异常检测模型。我们的方法可以模拟潜在的几何和光度变换,其中零件可以呈现给真实的相机,以忠实地再现自动检测系统的图像采集行为。我们评估了几种神经模型的准确性,这些模型使用不同的综合生成数据集训练,模拟不同的转换,例如相对于给定的相机的零件温度或零件位置和方向。结果表明,该方法在图像采集装置的设计和评估过程中是可行的,为未来实际应用的成功提供了保证。•计算方法→质量检验;工业制造;富有真实感渲染;CAD模型;异常检测;深度学习;生成对抗网络;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthetic Data Set Generation for the Evaluation of Image Acquisition Strategies Applied to Deep Learning Based Industrial Component Inspection Systems
Automated visual inspection is an ongoing machine vision challenge for industry. Faced with increasingly demanding quality standards it is reasonable to address the transition from a manual inspection system to an automatic one using some advanced machine learning approaches such as deep learning models. However, the introduction of neural models in environments such as the manufacturing industry find certain impairments or limitations. Indeed, due to the harsh conditions of manufacturing environments, there is usually the limitation of collecting a high quality database for training neural models. Also, the imbalance between non-defective and defective samples is very common issue in this type of scenarios. To alleviate these problems, this work proposes a pipeline to generate rendered images from CAD models of industrial components, to subsequently feed an anomaly detection model based on Deep Learning. Our approach can simulate the potential geometric and photometric transformations in which the parts could be presented to a real camera to faithfully reproduce the image acquisition behavior of an automatic inspection system. We evaluated the accuracy of several neural models trained with different synthetically generated data set simulating different transformations such as part temperature or part position and orientation with respect to a given camera. The results shows the feasibility of the proposed approach during the design and evaluation process of the image acquisition setup and to guarantee the success of the real future application. CCS Concepts • Computing methodologies → Quality Inspection; Industrial Manufacturing; Photo-realistic Rendering; CAD Models; Anomaly Detection; Deep Learning; Generative Adversarial Networks;
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