In this paper, we demonstrate simple algorithms that project low resolution (LR) images differing in subpixel shifts on a high resolution (HR) also called super resolution (SR) grid. The algorithms are very effective in accuracy as well as time efficiency. A number of spatial interpolation techniques using nearest neighbor, inverse-distance weighted averages, Radial Basis Functions (RBF) etc. are used in projection. For best accuracy of reconstructing SR image by a factor of two requires four LR images differing in four independent subpixel shifts. The algorithm has two steps: i) registration of low resolution images and (ii) shifting the low resolution images to align with reference image and projecting them on high resolution grid based on the shifts of each low resolution image using different interpolation techniques. Experiments are conducted by simulating low resolution images by subpixel shifts and subsampling of original high resolution image and the reconstructing the high resolution images from the simulated low resolution images. The results of accuracy of reconstruction are compared by using mean squared error measure between original high resolution image and reconstructed image. The algorithm was tested on remote sensing images and found to outperform previously proposed techniques such as Iterative Back Projection algorithm (IBP), Maximum Likelihood (ML) algorithms. The algorithms are robust and are not overly sensitive to the registration inaccuracies.
[1]
Thomas Martin Deserno,et al.
Survey: interpolation methods in medical image processing
,
1999,
IEEE Transactions on Medical Imaging.
[2]
Hsieh Hou,et al.
Cubic splines for image interpolation and digital filtering
,
1978
.
[3]
Thomas S. Huang,et al.
Image Super-Resolution: Historical Overview and Future Challenges
,
2017
.
[4]
Michal Irani,et al.
Improving resolution by image registration
,
1991,
CVGIP Graph. Model. Image Process..
[5]
J. Le Moigne,et al.
First evaluation of automatic image registration methods
,
1998,
IGARSS '98. Sensing and Managing the Environment. 1998 IEEE International Geoscience and Remote Sensing. Symposium Proceedings. (Cat. No.98CH36174).
[6]
Jacqueline Le Moigne,et al.
Image Registration for Remote Sensing: Similarity Metrics for Image Registration
,
2011
.
[7]
R. Keys.
Cubic convolution interpolation for digital image processing
,
1981
.
[8]
Peyman Milanfar,et al.
A computationally efficient superresolution image reconstruction algorithm
,
2001,
IEEE Trans. Image Process..