TY - JOUR
T1 - Positively constrained total variation penalized image restoration
AU - Chan, Raymond H.
AU - Liang, Hai Xia
AU - Ma, Jun
N1 - Funding Information:
The research was supported in part by HKRGC Grant CUHK 400508 and CUHK DAG 2060257.
PY - 2011/4
Y1 - 2011/4
N2 - The total variation (TV) minimization models are widely used in image processing, mainly due to their remarkable ability in preserving edges. There are many methods for solving the TV model. These methods, however, seldom consider the positivity constraint one should impose on image-processing problems. In this paper we develop and implement a new approach for TV image restoration. Our method is based on the multiplicative iterative algorithm originally developed for tomographic image reconstruction. The advantages of our algorithm are that it is very easy to derive and implement under different image noise models and it respects the positivity constraint. Our method can be applied to various noise models commonly used in image restoration, such as the Gaussian noise model, the Poisson noise model, and the impulsive noise model. In the numerical tests, we apply our algorithm to deblur images corrupted by Gaussian noise. The results show that our method give better restored images than the forwardbackward splitting algorithm.
AB - The total variation (TV) minimization models are widely used in image processing, mainly due to their remarkable ability in preserving edges. There are many methods for solving the TV model. These methods, however, seldom consider the positivity constraint one should impose on image-processing problems. In this paper we develop and implement a new approach for TV image restoration. Our method is based on the multiplicative iterative algorithm originally developed for tomographic image reconstruction. The advantages of our algorithm are that it is very easy to derive and implement under different image noise models and it respects the positivity constraint. Our method can be applied to various noise models commonly used in image restoration, such as the Gaussian noise model, the Poisson noise model, and the impulsive noise model. In the numerical tests, we apply our algorithm to deblur images corrupted by Gaussian noise. The results show that our method give better restored images than the forwardbackward splitting algorithm.
KW - Total variation
KW - maximum penalized likelihood
KW - multiplicative iterative algorithms
KW - positivity constraint
UR - http://www.scopus.com/inward/record.url?scp=80052618651&partnerID=8YFLogxK
U2 - 10.1142/S1793536911000817
DO - 10.1142/S1793536911000817
M3 - Article
AN - SCOPUS:80052618651
SN - 1793-5369
VL - 3
SP - 187
EP - 201
JO - Advances in Adaptive Data Analysis
JF - Advances in Adaptive Data Analysis
IS - 1-2
ER -