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MAP super-resolution reconstruction based on adaptive constraint regularization HL-MRF prior model
QIN Longlong, QIAN Yuan, ZHANG Xiaoyan, HOU Xue, ZHOU Qin
Journal of Computer Applications    2015, 35 (2): 506-509.   DOI: 10.11772/j.issn.1001-9081.2015.02.0506
Abstract982)      PDF (716KB)(351)       Save

Aiming at the poor suppression ability for the high-frequency noise in Huber-MRF prior model and the excessive punishment for the high frequency information of image in Gauss-MRF prior model, an adaptive regularization HL-MRF model was proposed. The method combined low frequency function of Huber edge punishment with high frequency function of Lorentzian edge punishment to realize a linear constraint for low frequency and a less punishment for high frequency. The model gained its optimal solution of parameters by using adaptive constraint method to determine regularization parameter. Compared with super-resolution reconstruction methods based on Gauss-MRF prior model and Huber-MRF prior model, the method based on HL-MRF prior model obtains higer Peak Signal-to-Noise Ratio (PSNR) and better performace in details, therefore it has ceratin advantage to suppress the high frequency noise and avoid excessively smoothing image details.

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