Robust Shape from Focus via Markov Random Fields

ЗаголовокRobust Shape from Focus via Markov Random Fields
Тип публикацииConference Paper
Год публикации2009
АвторыGaganov V, Ignatenko A
КонференцияGraphiCon'2009
Страницы74-80
Язык публикацииEnglish
ISBN978-5-317-02975-3
Ключевые слова3D reconstruction, computer vision, energy minimization, Markov Random Fields, MRF, shape from focus
Аннотация

In this paper we study a problem of 3D scene reconstruction from
a set of differently focused images, also known as the shape from
focus (SFF) problem. Existing shape from focus methods are
known to produce unstable depth estimates in areas with poor
texture and in presence of strong highlights. So in this work we
focus on the robustness of 3D scene structure recovery. We
formulate a shape from focus problem in a Bayesian framework
using Markov Random Fields and present an SFF method that
yields a globally optimal surface with enforced smoothness priors.
Although shape from focus has been studied for quite a long time
there is no widely accepted test set for evaluation of SFF
algorithms. Therefore we present a test set composed of 27 image
sets with hand-labeled ground truth. We quantitatively evaluate
our method on this test set and present the comparison results.
These results demonstrate that our method is robust to highlights
and untextured regions and that it outperforms the state-of-the-art.

URLhttp://www.graphicon.ru/proceedings/2009/conference/se3/83/83_Paper.pdf
Ключ цитирования437