Bayesian Tree-Structured Image Modeling using Wavelet-domain Hidden Markov Models

dc.citation.bibtexNameinproceedingsen_US
dc.citation.conferenceNameSPIE Conference on Mathematical Modeling, Bayesian Estimation, and Inverse Problemen_US
dc.citation.locationDenver, COen_US
dc.contributor.authorRomberg, Justinen_US
dc.contributor.authorChoi, Hyeokhoen_US
dc.contributor.authorBaraniuk, Richard G.en_US
dc.contributor.orgCenter for Multimedia Communications (http://cmc.rice.edu/)en_US
dc.contributor.orgDigital Signal Processing (http://dsp.rice.edu/)en_US
dc.date.accessioned2007-10-31T01:02:33Z
dc.date.available2007-10-31T01:02:33Z
dc.date.issued1999-07-20en
dc.date.modified2002-07-10en_US
dc.date.note2001-08-16en_US
dc.date.submitted1999-07-20en_US
dc.descriptionConference paperen_US
dc.description.abstractWavelet-domain hidden Markov models have proven to be useful tools for statistical signal and image processing. The hidden Markov tree (HMT) model captures the key features of the joint probability density of the wavelet coefficients of real-world data. One potential drawback to the HMT framework is the need for computationally expensive iterative training to fit an HMT model to a given data set (using the Expectation-Maximization algorithm, for example). In this paper, we greatly simplify the HMT model by exploiting the inherent self-similarity of real-world images. This simplified model specifies the HMT parameters with just nine meta-parameters (independent of the size of the image and the number of wavelet scales). We also introduce a Bayesian universal HMT (uHMT) that mixes these nine parameters. The uHMT requires no training of any kind. While extremely simple, we show using a series of image estimation/denoising experiments that these two new models retain nearly all of the key structure modeled by the full HMT. Finally, we propose a fast shift-invariant HMT estimation algorithm that outperforms other wavelet-based estimators in the current literature, both in mean-square error and visual metrics.en_US
dc.description.sponsorshipTexas Instrumentsen_US
dc.description.sponsorshipNational Science Foundationen_US
dc.identifier.citationJ. Romberg, H. Choi and R. G. Baraniuk, "Bayesian Tree-Structured Image Modeling using Wavelet-domain Hidden Markov Models," 1999.
dc.identifier.urihttps://hdl.handle.net/1911/20295
dc.language.isoeng
dc.subjecthidden Markov tree (HMT)*
dc.subjectwavelet*
dc.subjectBayesian universal*
dc.subject.keywordhidden Markov tree (HMT)en_US
dc.subject.keywordwaveleten_US
dc.subject.keywordBayesian universalen_US
dc.subject.otherWavelet based Signal/Image Processingen_US
dc.titleBayesian Tree-Structured Image Modeling using Wavelet-domain Hidden Markov Modelsen_US
dc.typeConference paper
dc.type.dcmiText
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