Recognition of Continuous Activities
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چکیده
The recognition of continuous human activities performed with several limbs is still an open problem. We propose a novel approach for recognition of continuous activities, which considers the direction change between frames to track the motion of several limbs, uses a Bayesian network to recognize different activities. The approach presented can recognize activities performed at different velocities by different people. We tested the model with real image sequences for 3 different activities performed on a continuous way.
منابع مشابه
Recognition of Continuous Activities
The recognition of continuous human activities performed with several limbs is still an open problem. We propose a novel approach for recognition of continuous activities, which considers the direction change between frames to track the motion of several limbs and uses a Bayesian network to recognize different activities. The approach presented can recognize activities performed at different ve...
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