Photon-limited image analysis is often hindered by low signal-to-noise ratios. A novel Bayesian multiscale modeling and analysis method is developed in this paper to assist in these challenging situations. In addition to providing a very natural and useful framework for modeling an d processing images, Bayesian multiscale analysis is often much less computationally demanding compared to classical Markov random field models. This paper focuses on a probabilistic graph model called the multiscale hidden Markov model (MHMM), which captures the key inter-scale dependencies present in natural image intensities. The MHMM framework presented here is specifically designed for photon-limited imagin applications involving Poisson statistics, and applications to image intensity analysis are examined.
Hyeokho ChoiRichard G. Baraniuk
Kazem TaghvaJeffrey CoombsRay PeredaThomas A. Nartker
Vidya VenkatachalamHyeokho ChoiRichard G. Baraniuk
Kenneth N. RossRonald D. Chaney