Gaussian noise with zero mean and variance
.4
2
In this study, T=30, the initial (standard)
patch size=
,1313 the size of search
neighbourhoods=
77 ,
,2.2
NLM
T
v
=0.018, and
p=8.
(a) (b)
(c) (d)
Figure 5: (a) The ground truth (the 10th video frame); (b)-
(d) the processed video frames by Lanczos interpolation,
NLM video SR algorithm, and the proposed approach,
respectively, with .33MF
(a) (b)
(c) (d)
Figure 6: Details of (a) the ground truth; and (b)-(d) the
processed video frames by Lanczos interpolation, NLM
video SR algorithm, and the proposed approach,
respectively, with
.33MF
The video SR reconstruction results of the 10th
video frame of the “Foreman” sequence by the two
comparison approaches and the proposed approach
are shown in Fig. 5, whereas the details of the
processing results shown in Fig. 5 are shown in Fig.
6. The visual quality of the processed results by the
proposed approach is indeed better than those by the
two comparison approaches. In terms of average
PSNR (peak-signal-to-noise-ratio) in dB, the
performance of the proposed approach for the three
video sequences are better than those of Lanczos
interpolation and the NLM video SR algorithm
about 0.8 dB and 0.5 dB, respectively.
4 CONCLUDING REMARKS
In this study, a new video SR reconstruction
approach using a mobile strategy and adaptive patch
size is proposed. Based on the NLM SR algorithm,
the mobile strategy for motion search center and
adaptive patch size are used to reduce the
computational complexity and improve the visual
quality, respectively. Based on the experimental
results obtained in this study, the performance of the
proposed approach is better than those of two
comparison approaches.
REFERENCES
Costa, G. H. and Bermudez, J. C. M., 2008. Informed
choice of the LMS parameters in super-resolution
video reconstruction applications. IEEE Trans. on
Signal Process., 56(2), 555-564.
Narayanan, B., Hardie, R. C., Barner, K. E., and Shao, M.,
2007. A computationally efficient super-resolution
algorithm for video processing using partition filters.
IEEE Trans. Circuits Syst. Video Technol., 17(5),
621–634.
Park, S., Park, M., and Kang, M. G., 2003. Super-
resolution image reconstruction: a technical overview.
IEEE Signal Process. Mag., 20(5), 21–36.
Protter, M. and Elad, M., 2009. Super resolution with
probabilistic motion estimation. IEEE Trans. Image
Process., 18(8), 1899–1904.
Protter, M., Elad, M., Takeda, H., and Milanfar, P., 2009.
Generalizing the nonlocal-means to super-resolution
reconstruction. IEEE Trans. Image Process., 18(1),
36–51.
Rudin, L., Osher, S., and Fatemi, E., 1992. Nonlinear total
variation based noise removal algorithms. Phys. D, 60,
259–268.
Tsai, R. Y. and Huang, T. S., 1984. Multiple frame image
restoration and registration. in Advances in Computer
Vision and Image Process., 1, 317-339.
Zibetti, M. V. W. and Mayer, J., 2007. A robust and
computationally efficient simultaneous super-
resolution scheme for image sequences. IEEE Trans.
Circuits Syst. Video Technol., 17(10), 1288-1300.
VIDEO SUPER-RESOLUTION RECONSTRUCTION USING A MOBILE SEARCH STRATEGY AND ADAPTIVE
PATCH SIZE
111