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Machine learning / Robot control / Markov models / Estimation theory / Kalman filter / Pattern recognition / Conditional random field / Video tracking / Causality / Optical flow / Particle filter
Date: 2006-06-07 15:00:45
Machine learning
Robot control
Markov models
Estimation theory
Kalman filter
Pattern recognition
Conditional random field
Video tracking
Causality
Optical flow
Particle filter

Combining Discriminative Features to Infer Complex Trajectories David A. Ross Simon Osindero

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Source URL: www.cs.toronto.edu

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