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A Regularized Super Resolution Algorithm for Generalized Gaussian Noise 被引量:1

A Regularized Super Resolution Algorithm for Generalized Gaussian Noise
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摘要 In this paper,an iterative regularized super resolution (SR) algorithm considering non-Gaussian noise is proposed.Based on the assumption of a generalized Gaussian distribution for the contaminating noise,an lp norm is adopted to measure the data fidelity term in the cost function.In the meantime,a regularization functional defined in terms of the desired high resolution (HR) image is employed,which allows for the simultaneous determination of its value and the partly reconstructed image at each iteration step.The convergence is thoroughly studied.Simulation results show the effectiveness of the proposed algorithm as well as its superiority to conventional SR methods. In this paper, an iterative regularized super resolution (SR) algorithm considering non-Gaussian noise is proposed. Based on the assumption of a generalized Gaussian distribution for the contaminating noise, an lp norm is adopted to measure the data fidelity term in the cost function. In the meantime, a regularization functional defined in terms of the desired high resolution (HR) image is employed, which allows for the simultaneous determination of its value and the partly reconstructed image at each iteration step. The convergence is thoroughly studied. Simulation results show the effectiveness of the proposed algorithm as well as its superiority to conventional SR methods.
出处 《Journal of Donghua University(English Edition)》 EI CAS 2010年第1期25-35,共11页 东华大学学报(英文版)
基金 National Natural Science Foundations of China(No.60705012,No.60802025)
关键词 super resolution generalized p-Gaussian distribution regularization parameter super resolution generalized p-Gaussian distribution regularization parameter
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参考文献27

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同被引文献19

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