Multi-Task Deep Learning for Surface Metrology
Abstract
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.
Cite
@article{arxiv.2510.20339,
title = {Multi-Task Deep Learning for Surface Metrology},
author = {D. Kucharski and A. Gaska and T. Kowaluk and K. Stepien and M. Repalska and B. Gapinski and M. Wieczorowski and M. Nawotka and P. Sobecki and P. Sosinowski and J. Tomasik and A. Wojtowicz},
journal= {arXiv preprint arXiv:2510.20339},
year = {2025}
}
Comments
34 pages, 10 figures, 6 tables; 60-page supplementary appendix. Code and full reproducibility bundle available via Zenodo