Multi-Task Deep Learning for Surface Metrology
Kucharski, D., Gaska, A., Kowaluk, T., Stepien, K., Repalska, M., Gapinski, B., Wieczorowski, M., Nawotka, M., Sobecki, P., Sosinowski, P., Tomasik, J., Wojtowicz, A.
A reproducible deep learning framework is presented for surface metrology to predict surface texture parameters together with their reported standard uncertainties. Using a multi-instrument dataset spanning tactile and optical systems, measurement system type classification is addressed alongside coordinated regression of Ra, Rz, RONt and their uncertainty targets (Ra_uncert, Rz_uncert, RONt_uncert). Uncertainty is modelled via quantile and heteroscedastic heads with post-hoc conformal calibration to yield calibrated intervals. On a held-out set, high fidelity was achieved by single-target regressors (R2: Ra 0.9824, Rz 0.9847, RONt 0.9918), with two uncertainty targets also well modelled (Ra_uncert 0.9899, Rz_uncert 0.9955); RONt_uncert remained difficult (R2 0.4934). The classifier reached 92.85% accuracy and probability calibration was essentially unchanged after temperature scaling (ECE 0.00504 -> 0.00503 on the test split). Negative transfer was observed for naive multi-output trunks, with single-target models performing better. These results provide calibrated predictions suitable to inform instrument selection and acceptance decisions in metrological workflows.
Oct-24-2025
- Country:
- Europe
- Netherlands > North Holland
- Amsterdam (0.04)
- Poland
- Greater Poland Province > Poznań (0.04)
- Lesser Poland Province > Kraków (0.04)
- Świętokrzyskie Province > Kielce (0.04)
- United Kingdom (0.04)
- Netherlands > North Holland
- North America > United States
- Massachusetts > Middlesex County > Cambridge (0.04)
- Europe
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- Research Report (0.50)
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