Title of article
Bayesian tree-structured image modeling using wavelet-domain hidden Markov models
Author/Authors
Romberg، نويسنده , , J.K.، نويسنده , , Hyeokho Choi، نويسنده , , Baraniuk، نويسنده , , R.G.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2001
Pages
13
From page
1056
To page
1068
Abstract
Wavelet-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 (e.g., using the expectation-maximization
algorithm). In this paper, we greatly simplify the HMT model by
exploiting the inherent self-similarity of real-world images. The
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 fixes 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
new models retain nearly all of the key image 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 visually and in mean square error.
Keywords
Hidden Markov tree , wavelets. , statistical image modeling
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Serial Year
2001
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Record number
396633
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