Title :
Dense Variational Reconstruction of Non-rigid Surfaces from Monocular Video
Author :
Garg, Radhika ; Roussos, Anastasios ; Agapito, Leobelle
Author_Institution :
Sch. of EECS, Queen Mary Univ. of London, London, UK
Abstract :
This paper offers the first variational approach to the problem of dense 3D reconstruction of non-rigid surfaces from a monocular video sequence. We formulate non-rigid structure from motion (nrsfm) as a global variational energy minimization problem to estimate dense low-rank smooth 3D shapes for every frame along with the camera motion matrices, given dense 2D correspondences. Unlike traditional factorization based approaches to nrsfm, which model the low-rank non-rigid shape using a fixed number of basis shapes and corresponding coefficients, we minimize the rank of the matrix of time-varying shapes directly via trace norm minimization. In conjunction with this low-rank constraint, we use an edge preserving total-variation regularization term to obtain spatially smooth shapes for every frame. Thanks to proximal splitting techniques the optimization problem can be decomposed into many point-wise sub-problems and simple linear systems which can be easily solved on GPU hardware. We show results on real sequences of different objects (face, torso, beating heart) where, despite challenges in tracking, illumination changes and occlusions, our method reconstructs highly deforming smooth surfaces densely and accurately directly from video, without the need for any prior models or shape templates.
Keywords :
edge detection; graphics processing units; image reconstruction; image sensors; image sequences; matrix algebra; minimisation; solid modelling; video signal processing; GPU hardware; camera motion matrices; dense 3D models; dense 3D variational reconstruction; dense low-rank smooth 3D shape estimation; edge preserving total-variation regularization term; global variational energy minimization problem; linear systems; low-rank constraint; matrix rank minimization; monocular video sequence; nonrigid structure-from-motion; nonrigid surfaces; nrsfm; optimization problem; point-wise subproblems; proximal splitting techniques; shape templates; trace norm minimization; Cameras; Estimation; Image reconstruction; Minimization; Shape; Three-dimensional displays; Trajectory; 3D reconstruction; non-rigid structure from motion; structure from motion;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPR.2013.168