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Published byAlexandra Wilson Modified over 9 years ago
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Tracking Sports Players with Context- Conditioned Motion Models Jingchen Liu, Peter Carr, Robert T. Collins and Yanxi Liu CVPR 2013
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Demo
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Bayesian Tracking Formulation Associate detections/observations to trajectories
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Kinematic Motion Models Continuity of motion alone may be insufficient to resolve identity 1 2 3 4 1 2 4
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Challenges for Tracking Sport Players Weak appearance features Player movements are highly correlated Current game situation influences how each individual will move Independent per-player motion models are tractable
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Context-Conditioned Motion Models Motion models conditioned on the current situation Context implicitly encodes multi-player interaction
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Hierarchical Data Association
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1 2 3 4 1 2 4 3 1 2 3 6 7 8 5 6 8 9
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Describe the probability of continuing as Context features: – Absolute position
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Hierarchical Data Association Describe the probability of continuing as Context features: – Absolute position – Relative position
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Hierarchical Data Association Describe the probability of continuing as Context features: – Absolute position – Relative position – Absolute motion
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Hierarchical Data Association Describe the probability of continuing as Context features: – Absolute position – Relative position – Absolute motion – Relative motion
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Context-Conditioned Motion Models Describe the probability of continuing as Radom decision forest of 500 trees
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Performance
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