For decades, super-resolution has been a widely applied technique to improve the spatial resolution of an image without hardware modification. Despite the advantages, super-resolution suffers from ill-posedness, a problem that makes the technique susceptible to multiple solutions. Therefore, scholars have proposed regularization approaches as attempts to address the challenge. The present work introduces a parameterized diffusion-steered regularization framework that integrates total variation (TV) and Perona-Malik (PM) smoothing functionals into the classical super-resolution model. The goal is to establish an automatic interplay between TV and PM regularizers such that only their critical useful properties are extracted to well pose the s...
Multi-frame image super-resolution (SR) aims to utilize information from a set of low-resolution (LR...
The attainment of super resolution (SR) from a sequence of degraded undersampled images could be vie...
A variety of super-resolution algorithms have been described in this book. Most of them are based on...
Super resolution reconstruction is an important branch of image processing that extracting high reso...
Super resolution reconstruction is an important branch of image processing that extracting high reso...
High-resolution is generally required and preferred for producing more detailed information inside t...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
This paper discusses resolution enhancement of a set of images with varying exposure durations, havi...
Super resolution is a signal processing method that utilizesinformation from multiple degraded image...
This paper presents a new technique for generating a high resolution image from a blurred image sequ...
Multi-Frame image restoration is a form of Super-Resolution (SR) which consists of combining multipl...
Abstract: Stochastic regularized methods are quite advantageous in Super-Resolution (SR) image recon...
Super-resolution (SR) reconstruction technique is capable of producing a high-resolution image from ...
Multi-frame image super-resolution (SR) aims to utilize information from a set of low-resolution (LR...
The attainment of super resolution (SR) from a sequence of degraded undersampled images could be vie...
A variety of super-resolution algorithms have been described in this book. Most of them are based on...
Super resolution reconstruction is an important branch of image processing that extracting high reso...
Super resolution reconstruction is an important branch of image processing that extracting high reso...
High-resolution is generally required and preferred for producing more detailed information inside t...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
International audienceMulti-frame image super-resolution (SR) aims to combine the sub-pixel informat...
This paper discusses resolution enhancement of a set of images with varying exposure durations, havi...
Super resolution is a signal processing method that utilizesinformation from multiple degraded image...
This paper presents a new technique for generating a high resolution image from a blurred image sequ...
Multi-Frame image restoration is a form of Super-Resolution (SR) which consists of combining multipl...
Abstract: Stochastic regularized methods are quite advantageous in Super-Resolution (SR) image recon...
Super-resolution (SR) reconstruction technique is capable of producing a high-resolution image from ...
Multi-frame image super-resolution (SR) aims to utilize information from a set of low-resolution (LR...
The attainment of super resolution (SR) from a sequence of degraded undersampled images could be vie...
A variety of super-resolution algorithms have been described in this book. Most of them are based on...