Perturb-and-MAP Random Fields: Reducing Random Sampling to Optimization, with Applications in Computer Vision

This chapter contains sections titled: 7.1 Introduction, 7.2 Energy-BasedModeling: Standard Deterministic and Probabilistic Approaches, 7.3 Perturb-and-MAP for Gaussian and Sparse Continuous MRFs, 7.4 Perturb-and-MAP for MRFs with Discrete Labels, 7.5 Related Work and Recent Developments, 7.6 Discussion, Acknowledgments, 7.7 References

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