Publication Type : Journal Article
Publisher : IEEE Signal Processing Letters
Source : IEEE Signal Processing Letters, Volume: 31, 2024
Url : https://ieeexplore.ieee.org/document/10685128
Campus : Faridabad
School : School of Artificial Intelligence
Year : 2024
Abstract : Superresolution (SR) methods become essential when an undersampled low-resolution (LR) image is unable to provide accurate target detection. The estimation of an HR image from a single LR image is ill-posed problem, and hence requires prior information. More the constraints, better is the reconstruction accuracy and this forms the basis of most of the contemporary state-of-the-art (SOTA) superresolution methods such as SRCNN and SRGAN which implement prior information as training set. Yet another approach to overcome the ill-posedness of the problem is to have multiple diverse LR images with the potential to reconstruct accurate HR image. Here we present the performance analysis of a generalized sampling theorem (GST) based multi-frame SR method. A simulation study using Gaussian targets is conducted, and a comparative performance analysis of the GST multi-frame SR method with the traditional multi-frame interpolation schemes and SOTA methods is presented using the percentage mean square error ( % MSE) and Structural Similarity Index Measure (SSIM). Our findings indicate that the GST SR method can outperform traditional interpolation and the SOTA methods.
Cite this Research Publication : Ravi, N. S., Kumar, R., Ratliff, B. M., "A Digital Superresolution Method With Minimal Sensitivity to Shift Estimation Error," IEEE Signal Processing Letters, Volume: 31, 2024