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Tracking and Motion Estimation of the Articulated Object: a Hierarchical Kalman Filter Approach
Affiliation:1. Department of Psychology, Renmin University of China, Beijing 100872, China;2. Department of Child Health Care, Children''s Hospital Zhejiang University School of Medicine, Zhejiang 310003, China;3. Department of Human Development and Quantitative Methodology, University of Maryland, College Park, MD 20740, USA;4. Boston Children''s Hospital, Harvard Medical School, Boston, MA 02115, USA;5. Center for Human Growth and Development, University of Michigan, Ann Arbor, MI 48109, USA;6. Department of Pediatrics and Communicable Diseases, University of Michigan, Ann Arbor, MI 48109, USA
Abstract:Real-time motion capture plays a very important role in various applications, such as 3D interface for virtual reality systems, digital puppetry, and real-time character animation. In this paper we challenge the problem of estimating and recognizing the motion of articulated objects using theoptical motion capturetechnique. In addition, we present an effective method to control the articulated human figure in realtime.The heart of this problem is the estimation of 3D motion and posture of an articulated, volumetric object using feature points from a sequence of multiple perspective views. Under some moderate assumptions such as smooth motion and known initial posture, we develop a model-based technique for the recovery of the 3D location and motion of a rigid object using a variation of Kalman filter. The posture of the 3D volumatric model is updated by the 2D image flow of the feature points for all views. Two novel concepts – the hierarchical Kalman filter (KHF) and the adaptive hierarchical structure (AHS) incorporating the kinematic properties of the articulated object – are proposed to extend our formulation for the rigid object to the articulated one. Our formulation also allows us to avoid two classic problems in 3D tracking: the multi-view correspondence problem, and the occlusion problem. By adding more cameras and placing them appropriately, our approach can deal with the motion of the object in a very wide area. Furthermore, multiple objects can be handled by managing multiple AHSs and processing multiple HKFs.We show the validity of our approach using the synthetic data acquired simultaneously from the multiple virtual camera in a virtual environment (VE) and real data derived from a moving light display with walking motion. The results confirm that the model-based algorithm works well on the tracking of multiple rigid objects.
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