Automated Domain Adaptation in Tool Condition Monitoring using Generative Adversarial Networks

Lutz B, Kißkalt D, Regulin D, Aybar B, Franke J (2021)


Publication Type: Conference contribution

Publication year: 2021

Publisher: IEEE Computer Society

Book Volume: 2021-August

Pages Range: 1326-1331

Conference Proceedings Title: IEEE International Conference on Automation Science and Engineering

Event location: Lyon, FRA

ISBN: 9781665418737

DOI: 10.1109/CASE49439.2021.9551632

Abstract

Microscopy is commonly used in machining to study the effects of tool wear. In modern tool condition monitoring systems, the analytical capabilities are further enhanced by machine learning, allowing for automated segmentation of the various visible defects. The prevailing challenge, however, is the divergence among different use cases, as the visual properties of cutting tool images are influenced by many domain-specific factors such as the type of the cutting tool, the respective machining process, and the image acquisition unit. Thus, we propose the usage of automated domain adaptation so that existing training data from source domains can be used effectively to train segmentation models for novel target domains, while minimizing the need for newly labelled data. This is achieved through image-to-image translation using generative adversarial networks, which generate synthetic images with similar visual characteristics as the target domain based on existing masks of the source domains. Our validation shows that with as few as ten labelled images from the target domain, a sufficient prediction performance of 0.72 mIoU can be achieved when tested on unseen images from the target domain. This corresponds to a reduction of manual labelling efforts by two-thirds compared to conventional labelling and training methods. Thus, by adapting existing data, prediction performance is increased while expensive data generation is minimized.

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How to cite

APA:

Lutz, B., Kißkalt, D., Regulin, D., Aybar, B., & Franke, J. (2021). Automated Domain Adaptation in Tool Condition Monitoring using Generative Adversarial Networks. In IEEE International Conference on Automation Science and Engineering (pp. 1326-1331). Lyon, FRA: IEEE Computer Society.

MLA:

Lutz, Benjamin, et al. "Automated Domain Adaptation in Tool Condition Monitoring using Generative Adversarial Networks." Proceedings of the 17th IEEE International Conference on Automation Science and Engineering, CASE 2021, Lyon, FRA IEEE Computer Society, 2021. 1326-1331.

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