A new weighted normal-based filter for 3D mesh denoising
Affiliation auteurs | Affiliation ok |
Titre | A new weighted normal-based filter for 3D mesh denoising |
Type de publication | Conference Paper |
Year of Publication | 2018 |
Auteurs | Hassouni MEl, Chetouani A, Jennane R, Cherifi H |
Editor | Minaoui K, ElHassouni M, Laanaya H, Lotfi D, Mouline S, Ouadou M, Rivenq A, Rziza M, Saoudi S |
Conference Name | 9TH INTERNATIONAL SYMPOSIUM ON SIGNAL, IMAGE, VIDEO AND COMMUNICATIONS (ISIVC 2018) |
Publisher | Lab Rech Informatique & Telecommunicat; AJCIT; IEEE, Morocco Sect; IEEE Signal Process Soc, Morocco Chaper; Univ Mohammed V Rabat; Univ Polytechnique; Dept OAE, Inst Electronique, Microelectronique Nanotechnologie, UNR CNRS 8520; Ecole Mines Telecom, Bret |
Conference Location | 345 E 47TH ST, NEW YORK, NY 10017 USA |
ISBN Number | 978-1-5386-8173-2 |
Mots-clés | Hausdorff distance, Mesh denoising, normal based error, sharpness myriad filter, vertex based error |
Résumé | In this paper, we propose a normal based filtering method for 3D mesh denoising. For this purpose, we compute the new triangle normal vectors by using a weighted sum of the average (smoothness) and the myriad (sharpness) filters in each neighborhood. These weights, that reflect the degree of the surface sharpness, are calculated according to the statistical distribution of the angles between the normal vectors of the triangles. The histogram of the angles between surface normal vectors is accurately fitted by the well known Cauchy distribution. Here, we justify the use of the myriad filter whose estimated value represents the optimum of the location parameter of the investigated distribution. Once the whole of the mesh normal vectors are filtered, the vertices positions are updated via the most used method in mesh denoising frameworks. We test the proposed method on synthetic and real scanned objects. To evaluate the performance, we use three errors metrics that are the vertex based error, the normal based error and the Hausdorff distance. Results show the superiority of our method and its efficiency is compared with some existing methods in the literature. |