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Automated 3D burr detection in cast manufacturing using sparse convolutional neural networks

Author

Listed:
  • Ahmed Mohammed

    (SINTEF Digital)

  • Johannes Kvam

    (SINTEF Digital)

  • Ingrid Fjordheim Onstein

    (Norwegian University of Science and Technology)

  • Marianne Bakken

    (SINTEF Digital)

  • Helene Schulerud

    (SINTEF Digital)

Abstract

For automating deburring of cast parts, this paper proposes a general method for estimating burr height using 3D vision sensor that is robust to missing data in the scans and sensor noise. Specifically, we present a novel data-driven method that learns features that can be used to align clean CAD models from a workpiece database to the noisy and incomplete geometry of a RGBD scan. Using the learned features with Random sample consensus (RANSAC) for CAD to scan registration, learned features improve registration result as compared to traditional approaches by (translation error ( $$\Delta $$ Δ 18.47 mm) and rotation error( $$\Delta 43 ^\circ $$ Δ 43 ∘ )) and accuracy(35%) respectively. Furthermore, a 3D-vision based automatic burr detection and height estimation technique is presented. The estimated burr heights were verified and compared with measurements from a high resolution industrial CT scanning machine. Together with registration, our burr height estimation approach is able to estimate burr height similar to high resolution CT scans with Z-statistic value ( $$z=0.279$$ z = 0.279 ).

Suggested Citation

  • Ahmed Mohammed & Johannes Kvam & Ingrid Fjordheim Onstein & Marianne Bakken & Helene Schulerud, 2023. "Automated 3D burr detection in cast manufacturing using sparse convolutional neural networks," Journal of Intelligent Manufacturing, Springer, vol. 34(1), pages 303-314, January.
  • Handle: RePEc:spr:joinma:v:34:y:2023:i:1:d:10.1007_s10845-022-02036-6
    DOI: 10.1007/s10845-022-02036-6
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