People tracking based on motion model and motion constraints with automatic initialization
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Human motion analysis is currently one of the most active research topics in computer vision. This paper presents a model-based approach to recovering motion parameters of walking people from monocular image sequences in a CONDENSATION framework. From the semi-automatically acquired training data, we learn a motion model represented as Gaussian distributions, and explore motion constraints by considering the dependency of motion parameters and represent them as conditional distributions. Then both of them are integrated into a dynamic model to concentrate factored sampling in the areas of the state-space with most posterior information. To measure the observation density with accuracy and robustness, a pose evaluation function (PEF) combining both boundary and region information is proposed. The function is modeled with a radial term to improve the efficiency of the factored sampling. We also address the issue of automatic acquisition of initial model pose and recovery from severe failures. A large number of experiments carried out in both indoor and outdoor scenes demonstrate that the proposed approach works well
论文关键词:Model-based human tracking,Motion model,Motion constraints,Initialization,CONDENSATION,Gaussian distribution
论文评审过程:Received 19 December 2002, Revised 15 December 2003, Accepted 5 January 2004, Available online 2 April 2004.
论文官网地址:https://doi.org/10.1016/j.patcog.2004.01.011