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An introduction to MCMC for machine learning.
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Keywords: machine learning, statistical inference, markov chain monte carlo sampling, stochastic dynamics
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Generalizing Swendsen-Wang to sampling arbitrary posterior
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Recognition-by-components: A theory of human image understanding.
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Keywords: 3d object recognition, 3d object detection, 3d model fitting
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Hierarchical chamfer matching: a parametric edge matching algorithm.
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Accurate sampling using langevin dynamics.
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A computational approach to edge detection.
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Rao-blackwellisation of sampling schemes.
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Keywords: rao-blackwellization, markov chain monte carlo sampling
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A Bayesian approach to unsupervised one-shot learning of object
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Learning generative visual models from few training examples: an
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Object class recognition by unsupervised scale-invariant learning.
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From images to shape models for object detection.
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The joy of sampling.
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Keywords: markov chain monte carlo sampling
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IEEE Transactions on Pattern Analysis and Machine Intelligence
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Keywords: statistical inference, markov chain monte carlo sampling, gibbs sampling
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Reversible jump Markov chain Monte Carlo computation and
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Keywords: statistical inference, reversible jump markov chain monte carlo sampling
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Keywords: statistical inference, reversible jump markov chain monte carlo sampling
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Bottom-up/top-down image parsing with attribute grammar.
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Monte Carlo sampling methods using Markov chains and their
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Putting objects in perspective.
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Hoiem, D., Rother, C., and Winn, J.
3D layoutCRF for multi-view object class recognition and
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Keywords: 3d object recognition, 3d object detection, image segmentation
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Kirkpatrick, S., Gelatt, C. D., and Vecchi, M. P.
Optimization by simulated annealing.
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Flexible object models for category-level 3D object recognition.
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Geometric reasoning for single image structure recovery.
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Beyond local appearance: category recognition from pairwise
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Viewpoint-independent object class detection using 3D feature maps.
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Keywords: 3d object recognition, 3d object detection, model-based vision
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Keywords: markov chain monte carlo sampling
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Keywords: 3d object detection, 3d model fitting, model-based vision, edge matching
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Distinctive image features from scale-invariant keypoints.
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Recovering 3D human body configurations using shape contexts.
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Keywords: 3d object recognition, 3d object detection, edge matching, markov chain monte carlo sampling
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Tech. rep., University of Arizona, 2009.
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Keywords: 3d object recognition, 3d object detection, edge matching, markov chain monte carlo sampling
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Covariance scaled sampling for monocular 3D body tracking.
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Keywords: tracking, particle filter
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Hyperdynamics importance sampling.
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Keywords: markov chain monte carlo sampling, importance sampling, tracking
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Estimating articulated human motion with covariance scaled sampling.
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Keywords: markov chain monte carlo sampling, stochastic dynamics
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Zhu, S.-C., Zhang, R., and Tu, Z.
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Keywords: object recognition, machine learning, statistical inference, data-driven markov chain monte carlo sampling
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