Compressed Sensing Image Reconstruction Via Recursive Spatially Adaptive Filtering

We introduce a new approach to image reconstruction from highly incomplete data. The available data are assumed to be a small collection of spectral coefficients of an arbitrary linear transform. This reconstruction problem is the subject of intensive study in the recent field of "compressed se...

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Bibliographic Details
Published in2007 IEEE International Conference on Image Processing Vol. 1; pp. I - 549 - I - 552
Main Authors Egiazarian, K., Foi, A., Katkovnik, V.
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.09.2007
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ISBN9781424414369
1424414369
ISSN1522-4880
DOI10.1109/ICIP.2007.4379013

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Summary:We introduce a new approach to image reconstruction from highly incomplete data. The available data are assumed to be a small collection of spectral coefficients of an arbitrary linear transform. This reconstruction problem is the subject of intensive study in the recent field of "compressed sensing" (also known as "compressive sampling"). Our approach is based on a quite specific recursive filtering procedure. At every iteration the algorithm is excited by injection of random noise in the unobserved portion of the spectrum and a spatially adaptive image denoising filter, working in the image domain, is exploited to attenuate the noise and reveal new features and details out of the incomplete and degraded observations. This recursive algorithm can be interpreted as a special type of the Robbins-Monro stochastic approximation procedure with regularization enabled by a spatially adaptive filter. Overall, we replace the conventional parametric modeling used in CS by a nonparametric one. We illustrate the effectiveness of the proposed approach for two important inverse problems from computerized tomography: Radon inversion from sparse projections and limited-angle tomography. In particular we show that the algorithm allows to achieve exact reconstruction of synthetic phantom data even from a very small number projections. The accuracy of our reconstruction is in line with the best results in the compressed sensing field.
ISBN:9781424414369
1424414369
ISSN:1522-4880
DOI:10.1109/ICIP.2007.4379013