Most state-of-the-art nonrigid shape recovery methods
usually use explicit deformable mesh models to regularize
surface deformation and constrain the search space. These
triangulated mesh models heavily relying on the quadratic
regularization term are difficult to accurately capture large
deformations, such as severe bending. In this paper, we propose
a novel Gaussian process regression approach to the
nonrigid shape recovery problem, which does not require to
involve a predefined triangulated mesh model. By taking
advantage of our novel Gaussian process regression formulation
together with a robust coarse-to-fine optimization
scheme, the proposed method is fully automatic and is able
to handle large deformations and outliers. We conducted
a set of extensive experiments for performance evaluation
in various environments. Encouraging experimental results
show that our proposed approach is both effective and robust
to nonrigid shape recovery with large deformations.
Jianke Zhu, Michael R. Lyu, Steven C. H. Hoi