Evolutionary Quasi-Random Search for Hand Articulations Tracking

Computer Vision and Pattern Recognition(2014)

引用 73|浏览18
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摘要
We present a new method for tracking the 3D position, global orientation and full articulation of human hands. Following recent advances in model-based, hypothesize-and-test methods, the high-dimensional parameter space of hand configurations is explored with a novel evolutionary optimization technique specifically tailored to the problem. The proposed method capitalizes on the fact that samples from quasi-random sequences such as the Sobol have low discrepancy and exhibit a more uniform coverage of the sampled space compared to random samples obtained from the uniform distribution. The method has been tested for the problems of tracking the articulation of a single hand (27D parameter space) and two hands (54D space). Extensive experiments have been carried out with synthetic and real data, in comparison with state of the art methods. The quantitative evaluation shows that for cases of limited computational resources, the new approach achieves a speed-up of four (single hand tracking) and eight (two hands tracking) without compromising tracking accuracy. Interestingly, the proposed method is preferable compared to the state of the art either in the case of limited computational resources or in the case of more complex (i.e., higher dimensional) problems, thus improving the applicability of the method in a number of application domains.
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关键词
evolutionary computation,image sampling,image sequences,object tracking,optimisation,random sequences,27D parameter space,3D position tracking,54D parameter space,Sobol,computational resource,evolutionary optimization technique,evolutionary quasirandom search,hand articulation tracking,high-dimensional parameter space,image sampling,model-based hypothesize-and-test method,random distribution,uniform distribution,3D hand tracking,Evolutionary optimization,Quasi-random sampling,Sobol sequence
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