Deep Learning Based Synthetic Image Generation for Defect Detection in Additive Manufacturing Industrial Environments

Daniel Matuszczyk, Niklas Tschorn, F. Weichert
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引用次数: 3

Abstract

As the amount of additive manufactured parts is rising methods for part defect detection are needed to guarantee good product quality and fulfill quality management requirements. The usage of deep learning methods in industrial environments for artefact detection is growing, therefore, it is crucial to obtain enough training data in order to deploy powerful models for intelligent control systems. We propose a novel approach for synthetic image creation for object defect detection of Fused Deposition Modeling (FDM) manufactured parts based on deep learning methods and demonstrate the capability to enhance deep learning based defect detection with synthetic images. Our approach is based on physical rendering in combination with a generative adversarial network (GAN) for synthetic data generation. We illustrate how the generated synthetic images can be used to enhance deep learning methods by training an auto encoder model which afterwards is used for failure detection. By an evaluation study it is depicted that our approach for synthetic image generation achieves good results where, in comparison to real world images nearly the same amount of images are assumed to be real. Using the advantage of synthetic data, the autoencoder model is able to detect failures in real images. Therefore, the approach is able to generate photo realistic images which can be used to detect defects on parts with limited training material.
基于深度学习的增材制造工业环境缺陷检测合成图像生成
随着增材制造零件数量的不断增加,为了保证产品质量和满足质量管理要求,需要零件缺陷检测方法。深度学习方法在工业环境中用于人工制品检测的使用正在增长,因此,为了为智能控制系统部署强大的模型,获得足够的训练数据至关重要。我们提出了一种基于深度学习方法的合成图像创建新方法,用于熔融沉积建模(FDM)制造零件的对象缺陷检测,并展示了使用合成图像增强基于深度学习的缺陷检测的能力。我们的方法是基于物理渲染结合生成对抗网络(GAN)的合成数据生成。我们说明了生成的合成图像如何通过训练自动编码器模型来增强深度学习方法,该模型随后用于故障检测。通过评估研究表明,我们的合成图像生成方法取得了很好的结果,与真实世界的图像相比,几乎相同数量的图像被认为是真实的。利用合成数据的优势,该自编码器模型能够检测出真实图像中的故障。因此,该方法能够生成逼真的图像,可用于在有限的训练材料下检测零件上的缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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