Title :
Covariance scaled sampling for monocular 3D body tracking
Author :
Sminchisescu, Cristian ; Triggs, Bill
Author_Institution :
GRAVIR, INRIA, Montbonnot, France
Abstract :
We present a method for recovering 3D human body motion from monocular video sequences using robust image matching, joint limits and non-self-intersection constraints, and a new sample-and-refine search strategy guided by rescaled cost-function covariances. Monocular 3D body tracking is challenging: for reliable tracking at least 30 joint parameters need to be estimated, subject to highly nonlinear physical constraints; the problem is chronically ill conditioned as about 1/3 of the d.o.f. (the depth-related ones) are almost unobservable in any given monocular image; and matching an imperfect, highly flexible self-occluding model to cluttered image features is intrinsically hard. To reduce correspondence ambiguities we use a carefully designed robust matching-cost metric that combines robust optical flow, edge energy, and motion boundaries. Even so, the ambiguity, nonlinearity and non-observability make the parameter-space cost surface multi-modal, unpredictable and ill conditioned, so minimizing it is difficult. We discuss the limitations of CONDENSATION-like samplers, and introduce a novel hybrid search algorithm that combines inflated-covariance-scaled sampling and continuous optimization subject to physical constraints. Experiments on some challenging monocular sequences show that robust cost modelling, joint and self-intersection constraints, and informed sampling are all essential for reliable monocular 3D body tracking.
Keywords :
computational complexity; covariance analysis; image matching; image sampling; image sequences; search problems; 3D human body motion recovery; CONDENSATION-like samplers; cluttered image features; continuous optimization; correspondence ambiguities; covariance scaled sampling; edge energy; highly nonlinear physical constraints; hybrid search algorithm; inflated-covariance-scaled sampling; informed sampling; joint limits; joint parameter estimation; monocular 3D body tracking; monocular sequences; monocular video sequences; motion boundaries; non-self-intersection constraints; parameter-space cost surface; particle filtering; rescaled cost-function covariances; robust cost modelling; robust image matching; robust matching-cost metric; robust optical flow; sample-and-refine search strategy; self-occluding model; Costs; Humans; Image matching; Image sampling; Joints; Nonlinear optics; Optical design; Robustness; Sampling methods; Video sequences;
Conference_Titel :
Computer Vision and Pattern Recognition, 2001. CVPR 2001. Proceedings of the 2001 IEEE Computer Society Conference on
Print_ISBN :
0-7695-1272-0
DOI :
10.1109/CVPR.2001.990509