Title :
Tracking Generic Human Motion via Fusion of Low- and High-Dimensional Approaches
Author :
Jinshi Cui ; Ye Liu ; Yuandong Xu ; Huijing Zhao ; Hongbin Zha
Author_Institution :
Key Lab. of Machine Perception(Minist. of Educ.), Peking Univ., Beijing, China
Abstract :
Tracking generic human motion is highly challenging due to its high-dimensional state space and the various motion types involved. In order to deal with these challenges, a fusion formulation which integrates low- and high-dimensional tracking approaches into one framework is proposed. The low-dimensional approach successfully overcomes the high-dimensional problem of tracking the motions with available training data by learning motion models, but it only works with specific motion types. On the other hand, although the high-dimensional approach may recover the motions without learned models by sampling directly in the pose space, it lacks robustness and efficiency. Within the framework, the two parallel approaches, low- and high-dimensional, are fused via a probabilistic approach at each time step. This probabilistic fusion approach ensures that the overall performance of the system is improved by concentrating on the respective advantages of the two approaches and resolving their weak points. The experimental results, after qualitative and quantitative comparisons, demonstrate the effectiveness of the proposed approach in tracking generic human motion.
Keywords :
image fusion; image motion analysis; object tracking; probability; fusion formulation; generic human motion tracking; high-dimensional tracking; low-dimensional tracking; parallel approach; pose space; probabilistic fusion approach; state space; Computational modeling; Humans; Legged locomotion; Probabilistic logic; Standards; Tracking; Training data; High-dimensional methods; human motion tracking; low-dimensional methods; probabilistic fusion;
Journal_Title :
Systems, Man, and Cybernetics: Systems, IEEE Transactions on
DOI :
10.1109/TSMCA.2012.2223670