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Main Authors: Schoonbeek, Tim J., Balachandran, Goutham, Onvlee, Hans, Houben, Tim, Hung, Shao-Hsuan, Kustra, Jacek, de With, Peter H. N., van der Sommen, Fons
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.11700
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author Schoonbeek, Tim J.
Balachandran, Goutham
Onvlee, Hans
Houben, Tim
Hung, Shao-Hsuan
Kustra, Jacek
de With, Peter H. N.
van der Sommen, Fons
author_facet Schoonbeek, Tim J.
Balachandran, Goutham
Onvlee, Hans
Houben, Tim
Hung, Shao-Hsuan
Kustra, Jacek
de With, Peter H. N.
van der Sommen, Fons
contents Assembly state recognition facilitates the execution of assembly procedures, offering feedback to enhance efficiency and minimize errors. However, recognizing assembly states poses challenges in scalability, since parts are frequently updated, and the robustness to execution errors remains underexplored. To address these challenges, this paper proposes an approach based on representation learning and the novel intermediate-state informed loss function modification (ISIL). ISIL leverages unlabeled transitions between states and demonstrates significant improvements in clustering and classification performance for all tested architectures and losses. Despite being trained exclusively on images without execution errors, thorough analysis on error states demonstrates that our approach accurately distinguishes between correct states and states with various types of execution errors. The integration of the proposed algorithm can offer meaningful assistance to workers and mitigate unexpected losses due to procedural mishaps in industrial settings. The code is available at: https://timschoonbeek.github.io/state_rec
format Preprint
id arxiv_https___arxiv_org_abs_2408_11700
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Supervised Representation Learning towards Generalizable Assembly State Recognition
Schoonbeek, Tim J.
Balachandran, Goutham
Onvlee, Hans
Houben, Tim
Hung, Shao-Hsuan
Kustra, Jacek
de With, Peter H. N.
van der Sommen, Fons
Computer Vision and Pattern Recognition
Assembly state recognition facilitates the execution of assembly procedures, offering feedback to enhance efficiency and minimize errors. However, recognizing assembly states poses challenges in scalability, since parts are frequently updated, and the robustness to execution errors remains underexplored. To address these challenges, this paper proposes an approach based on representation learning and the novel intermediate-state informed loss function modification (ISIL). ISIL leverages unlabeled transitions between states and demonstrates significant improvements in clustering and classification performance for all tested architectures and losses. Despite being trained exclusively on images without execution errors, thorough analysis on error states demonstrates that our approach accurately distinguishes between correct states and states with various types of execution errors. The integration of the proposed algorithm can offer meaningful assistance to workers and mitigate unexpected losses due to procedural mishaps in industrial settings. The code is available at: https://timschoonbeek.github.io/state_rec
title Supervised Representation Learning towards Generalizable Assembly State Recognition
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.11700