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Robust Pose Estimation with 3D Textured Models,
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Earlier:
A Sequential Monte-Carlo and DSmT Based Approach for Conflict Handling
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Visual tracking; Particle filter; Sequential Monte-Carlo
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Earlier: A1, A3, A2, A4, A5:
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Transfer learning
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Sequential Monte Carlo tracking of body parameters in a sub-space,
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Chapter on Pattern Recognition, Clustering, Statistics, Grammars, Learning, Neural Nets, Genetic Algorithms continues in
Domain Adaptation .