Fengqing Qin
Institute of Computer Science and Technology in Yibin University, Yibin, 644000, China
ABSTRACT
In order to improve the spatial resolution of videos, utilizing the sub-pixel movement information between the low-resolution frames and the blur function of the imaging system, a blind video super-resolution reconstruction method is proposed. Firstly, through Taylor series expansion and least square solving method, the movement parameters between the adjacent frames in the sliding window are estimated from coarseness to fine. Secondly, according to the error-parameter curves generated through Wiener filter image restoration method, the parameters of the Point Spread Function (PSF) of the reference frame in the sliding window are estimated. Finally, super-resolution frames are reconstructed through Iterative Back Projection (IBP) algorithm. Experiments are performed on simulated low resolution images and standard test video and practical video, respectively. The results demonstrate the effectiveness of our approach and show the great importance of Gaussian blur estimation in video super-resolution reconstruction.
PDF References Citation
How to cite this article
Fengqing Qin, 2013. Blind Video Super-Resolution Reconstruction with Gaussian Blur Estimation. Information Technology Journal, 12: 8058-8065.
DOI: 10.3923/itj.2013.8058.8065
URL: https://scialert.net/abstract/?doi=itj.2013.8058.8065
DOI: 10.3923/itj.2013.8058.8065
URL: https://scialert.net/abstract/?doi=itj.2013.8058.8065
REFERENCES
- Cheng, M.H., H.Y. Chen and J.J. Leou, 2011. Video Super-resolution reconstruction using a mobile search strategy and adaptive patch size. Signal Process., 91: 1284-1297.
CrossRefDirect Link - Giannoula, A., 2011. Classification-based adaptive filtering for multiframe blind image restoration. IEEE Trans. Image Process., 20: 382-390.
CrossRefDirect Link - He, Y., K.H. Yap, L. Chen and L.P. Chau, 2009. A soft MAP framework for blind super-resolution image reconstruction. Image Vision Comput., 27: 364-373.
CrossRefDirect Link - Jin, C., J. Nunez-Yanez and A. Achim, 2012. Video Super-resolution using generalized gaussian markov random fields. IEEE Signal Process. Lett., 19: 63-66.
CrossRef - Keller, S.H., F. Lauze and M. Nielsen, 2011. Video Super-resolution using simultaneous motion and intensity calculations. IEEE Trans. Image Process., 20: 1870-1884.
CrossRef - Qin, F.Q., X.H. He, W.L. Chen, X.M. Yang and W. Wu, 2009. Video superresolution reconstruction based on subpixel registration and iterative back projection. J. Electron. Imaging, Vol. 18.
CrossRefDirect Link - Tian, J. and K.K. Ma, 2011. A survey on super-resolution imaging. Signal Image Video Process., 5: 329-342.
CrossRefDirect Link - Xiong, Z., X. Sun and F. Wu, 2010. Robust web image/video super-resolution. IEEE Trans. Image Process., 19: 2017-2028.
CrossRefDirect Link - Zhang, K., G. Mu, Y. Yuan, X. Gao and D. Tao, 2012. Video Super-resolution with 3D adaptive normalized convolution. Neurocomputing, 94: 140-151.
CrossRefDirect Link