Vladimir Yanovski, Israel A. Wagner, et al.
Ann. Math. Artif. Intell.
We present a generative model and inference algorithm for 3D nonrigid object tracking. The model, which we call G-flow, enables the joint inference of 3D position, orientation, and nonrigid deformations, as well as object texture and background texture. Optimal inference under G-flow reduces to a conditionally Gaussian stochastic filtering problem. The optimal solution to this problem reveals a new space of computer vision algorithms, of which classic approaches such as optic flow and template matching are special cases that are optimal only under special circumstances. We evaluate G-flow on the problem of tracking facial expressions and head motion in 3D from single-camera video. Previously, the lack of realistic video data with ground truth nonrigid position information has hampered the rigorous evaluation of nonrigid tracking. We introduce a practical method of obtaining such ground truth data and present a new face video data set that was created using this technique. Results on this data set show that G-flow is much more robust and accurate than current deterministic optic-flow-based approaches. © 2010 IEEE.
Vladimir Yanovski, Israel A. Wagner, et al.
Ann. Math. Artif. Intell.
Rama Akkiraju, Pinar Keskinocak, et al.
Applied Intelligence
A. Manzalini, R. Minerva, et al.
ICIN 2013
Joxan Jaffar
Journal of the ACM