In this paper, we propose a mesh-based feature detection scheme that focuses on surface features. A class of features of key interest is intentional structures that act as fiducials and that, for instance, can assist in shape retrieval and distortion measurement. We introduce a tunable two-scale depth measurement scheme to quantify the displacement of a vertex from the local surface, which can be a strong indicator of features. We print and scan 3D models with fiducial features appearing across the surface to demonstrate the high fidelity and accuracy of the proposed feature detection scheme. The method outperforms existing 3D feature detection schemes on CAD models and 3D scans alike. We also discuss applications of data embedding enabled by the achievable detection performance.
Yujian Xu, Robert Ulichney, Jan P. Allebach, Matthew Gaubatz, Stephen Pollard, "Scale-adaptive local intentional surface feature detection" in Electronic Imaging, 2022, pp 223-1 - 223-6, https://doi.org/10.2352/EI.2022.34.17.3DIA-223