It is very interesting to reconstruct high‐resolution computed tomography (CT) medical images that are very useful for clinicians to analyse the diseases. This study proposes an improved super‐resolution method for CT medical images in the sparse representation domain with dictionary learning. The sparse coupled K‐singular value decomposition (KSVD) algorithm is employed for dictionary learning purposes. Images are divided into two sets of low resolution (LR) and high resolution (HR), to improve the quality of low‐resolution images, the authors prepare dictionaries over LR and HR image patches using the KSVD algorithm. The main idea behind the proposed method is that sparse coupled dictionaries learn about each patch and establish the relat...
Dictionaries are crucial in sparse coding-based algorithms for image superresolution. Sparse coding ...
To improve the quality of the super-resolution (SR) reconstructed medical images, an improved adapti...
Abstract. In this paper we discuss the impact of using algorithms for dictionary learning to build a...
Although diagnostic medical imaging provides enormous benefits in the early detection and accuracy d...
In sparse representation based super-resolution, high resolution image is estimated from a single lo...
High-resolution chest computed tomography images now has a great importance in the diagnosis. Howeve...
X-ray computed tomography (CT) is an essential tool in modern medicine. As the scale and diversity o...
Dictionary learning and sparse representation are efficient methods for single-image super-resolutio...
Recently, low-dose computed tomography (CT) has become highly desirable due to increasing attention ...
International audienceA dictionary learning based denoising method is introduced to eliminate the no...
A major obstacle in computed tomography (CT) is the reduction of harmful x-ray dose while maintaini...
Compressed sensing (CS) utilizes the sparsity of MR images to enable accurate reconstruction from un...
This paper introduces a novel design for the dictionary learning algorithm, intended for scalable sp...
X-ray based Phase-Contrast Imaging (PCI) techniques have been demonstrated to enhance the visualizat...
Abstract This paper introduces a novel design for the dictionary learning algorithm, intended for sc...
Dictionaries are crucial in sparse coding-based algorithms for image superresolution. Sparse coding ...
To improve the quality of the super-resolution (SR) reconstructed medical images, an improved adapti...
Abstract. In this paper we discuss the impact of using algorithms for dictionary learning to build a...
Although diagnostic medical imaging provides enormous benefits in the early detection and accuracy d...
In sparse representation based super-resolution, high resolution image is estimated from a single lo...
High-resolution chest computed tomography images now has a great importance in the diagnosis. Howeve...
X-ray computed tomography (CT) is an essential tool in modern medicine. As the scale and diversity o...
Dictionary learning and sparse representation are efficient methods for single-image super-resolutio...
Recently, low-dose computed tomography (CT) has become highly desirable due to increasing attention ...
International audienceA dictionary learning based denoising method is introduced to eliminate the no...
A major obstacle in computed tomography (CT) is the reduction of harmful x-ray dose while maintaini...
Compressed sensing (CS) utilizes the sparsity of MR images to enable accurate reconstruction from un...
This paper introduces a novel design for the dictionary learning algorithm, intended for scalable sp...
X-ray based Phase-Contrast Imaging (PCI) techniques have been demonstrated to enhance the visualizat...
Abstract This paper introduces a novel design for the dictionary learning algorithm, intended for sc...
Dictionaries are crucial in sparse coding-based algorithms for image superresolution. Sparse coding ...
To improve the quality of the super-resolution (SR) reconstructed medical images, an improved adapti...
Abstract. In this paper we discuss the impact of using algorithms for dictionary learning to build a...