Sequential Non-Rigid Structure from Motion Using Physical Priors.

IEEE Trans. Pattern Anal. Mach. Intell.(2016)

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摘要
We propose a new approach to simultaneously recover camera pose and 3D shape of non-rigid and potentially extensible surfaces from a monocular image sequence. For this purpose, we make use of the Extended Kalman Filter based Simultaneous Localization And Mapping (EKF-SLAM) formulation, a Bayesian optimization framework traditionally used in mobile robotics for estimating camera pose and reconstructing rigid scenarios. In order to extend the problem to a deformable domain we represent the objectu0027s surface mechanics by means of Navieru0027s equations, which are solved using a Finite Element Method (FEM). With these main ingredients, we can further model the materialu0027s stretching, allowing us to go a step further than most of current techniques, typically constrained to surfaces undergoing isometric deformations. We extensively validate our approach in both real and synthetic experiments, and demonstrate its advantages with respect to competing methods. More specifically, we show that besides simultaneously retrieving camera pose and non-rigid shape, our approach is adequate for both isometric and extensible surfaces, does not require neither batch processing all the frames nor tracking points over the whole sequence and runs at several frames per second.
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关键词
Bayes methods,Kalman filters,cameras,deformation,finite element analysis,image motion analysis,image reconstruction,image sequences,nonlinear filters,optimisation,pose estimation,shape recognition,solid modelling,3D shape recovery,Bayesian optimization framework,EKF-SLAM formulation,FEM,Navier's equations,camera pose estimation,camera pose recovery,extended Kalman filter,extensible surfaces,finite element method,isometric deformations,mobile robotics,monocular image sequence,physical priors,rigid scenario reconstruction,sequential nonrigid structure,simultaneous localization and mapping formulation,surface mechanics,Extended Kalman Filter,Finite Element Method,Non-Rigid Structure from Motion,Tracking,tracking
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