Technologies for 3D data acquisition and 3D printing have enormously developed in the past few years, and, consequently, the demand for 3D virtual twins of the original scanned objects has increased. In this context, feature-aware denoising, hole filling and context-aware completion are three essential (but far from trivial) tasks. In this work, they are integrated within a geometric framework and realized through a unified variational model aiming at recovering triangulated surfaces from scanned, damaged and possibly incomplete noisy observations. The underlying non-convex optimization problem incorporates two regularisation terms: a discrete approximation of the Willmore energy forcing local sphericity and suited for the recovery of rounded features, and an approximation of the l(0) pseudo-norm penalty favouring sparsity in the normal variation. The proposed numerical method solving the model is parameterization-free, avoids expensive implicit volumebased computations and based on the efficient use of the Alternating Direction Method of Multipliers. Experiments show how the proposed framework can provide a robust and elegant solution suited for accurate restorations even in the presence of severe random noise and large damaged areas.

A Unified Surface Geometric Framework for Feature-Aware Denoising, Hole Filling and Context-Aware Completion / Calatroni L.; Huska M.; Morigi S.; Recupero G.A.. - In: JOURNAL OF MATHEMATICAL IMAGING AND VISION. - ISSN 1573-7683. - STAMPA. - 65:1(2023), pp. 82-98. [10.1007/s10851-022-01107-w]

A Unified Surface Geometric Framework for Feature-Aware Denoising, Hole Filling and Context-Aware Completion

Calatroni L.;Huska M.;Morigi S.
;
Recupero G. A.
2023

Abstract

Technologies for 3D data acquisition and 3D printing have enormously developed in the past few years, and, consequently, the demand for 3D virtual twins of the original scanned objects has increased. In this context, feature-aware denoising, hole filling and context-aware completion are three essential (but far from trivial) tasks. In this work, they are integrated within a geometric framework and realized through a unified variational model aiming at recovering triangulated surfaces from scanned, damaged and possibly incomplete noisy observations. The underlying non-convex optimization problem incorporates two regularisation terms: a discrete approximation of the Willmore energy forcing local sphericity and suited for the recovery of rounded features, and an approximation of the l(0) pseudo-norm penalty favouring sparsity in the normal variation. The proposed numerical method solving the model is parameterization-free, avoids expensive implicit volumebased computations and based on the efficient use of the Alternating Direction Method of Multipliers. Experiments show how the proposed framework can provide a robust and elegant solution suited for accurate restorations even in the presence of severe random noise and large damaged areas.
2023
A Unified Surface Geometric Framework for Feature-Aware Denoising, Hole Filling and Context-Aware Completion / Calatroni L.; Huska M.; Morigi S.; Recupero G.A.. - In: JOURNAL OF MATHEMATICAL IMAGING AND VISION. - ISSN 1573-7683. - STAMPA. - 65:1(2023), pp. 82-98. [10.1007/s10851-022-01107-w]
Calatroni L.; Huska M.; Morigi S.; Recupero G.A.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/897105
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