This paper develops a multi-frame image super-resolution approach from a Bayesian view-point by marginalizing over the unknown registration parameters relating the set of input low-resolution views. In Tipping and Bishop’s Bayesian image super-resolution approach [16], the marginalization was over the superresolution image, necessitating the use of an unfavorable image prior. By integrating over the registration parameters rather than the high-resolution image, our method allows for more realistic prior distributions, and also reduces the dimension of the integral considerably, removing the main computational bottleneck of the other algorithm. In addition to the motion model used by Tipping and Bishop, illumination components are introduced...
Although multi-frame super resolution has been exten-sively studied in past decades, super resolving...
234 p.The key objective of super-resolution (SR) imaging is to reconstruct a single higher-resolutio...
We propose a Bayesian approach for the super resolu-tion image reconstruction (SRIR) problem using a...
We present a novel method of Bayesian image super-resolution in which marginalization is carried out...
Super-resolution methods form high-resolution images from low-resolution images. In this paper, we d...
Abstract—Super-resolution methods form high-resolution images from low-resolution images. In this pa...
In this paper we present a super resolution Bayesian methodology for pansharpening of multispectral ...
The objective of superresolution is to reconstruct a high-resolution image by using the information ...
This paper presents Bayesian edge inference (BEI), a single-frame super-resolution method explicitly...
This chapter examines multiframe image super-resolution in a probabilistic framework. Many multifram...
This chapter examines multiframe image super-resolution in a probabilistic framework. Many multifram...
AbstractIn this paper we present a super resolution Bayesian methodology for pansharpening of multis...
Abstract—In this paper the Super-Resolution (SR) image regis-tration and reconstruction problem is s...
Multi-frame super-resolution algorithms aim to increase spatial resolution by fusing information fro...
234 p.The key objective of super-resolution (SR) imaging is to reconstruct a single higher-resolutio...
Although multi-frame super resolution has been exten-sively studied in past decades, super resolving...
234 p.The key objective of super-resolution (SR) imaging is to reconstruct a single higher-resolutio...
We propose a Bayesian approach for the super resolu-tion image reconstruction (SRIR) problem using a...
We present a novel method of Bayesian image super-resolution in which marginalization is carried out...
Super-resolution methods form high-resolution images from low-resolution images. In this paper, we d...
Abstract—Super-resolution methods form high-resolution images from low-resolution images. In this pa...
In this paper we present a super resolution Bayesian methodology for pansharpening of multispectral ...
The objective of superresolution is to reconstruct a high-resolution image by using the information ...
This paper presents Bayesian edge inference (BEI), a single-frame super-resolution method explicitly...
This chapter examines multiframe image super-resolution in a probabilistic framework. Many multifram...
This chapter examines multiframe image super-resolution in a probabilistic framework. Many multifram...
AbstractIn this paper we present a super resolution Bayesian methodology for pansharpening of multis...
Abstract—In this paper the Super-Resolution (SR) image regis-tration and reconstruction problem is s...
Multi-frame super-resolution algorithms aim to increase spatial resolution by fusing information fro...
234 p.The key objective of super-resolution (SR) imaging is to reconstruct a single higher-resolutio...
Although multi-frame super resolution has been exten-sively studied in past decades, super resolving...
234 p.The key objective of super-resolution (SR) imaging is to reconstruct a single higher-resolutio...
We propose a Bayesian approach for the super resolu-tion image reconstruction (SRIR) problem using a...