Abstract
Color images have a wider range of applications than gray images. There are two ways to extend the traditional super-resolution reconstruction method to color images: Super resolution reconstructs each channel of the color image individually; Change the RGB color bands into YCrCb color bands, then super-resolution reconstructs the luminance component and interpolates the chrominance components.These algorithms cannot effectively utilize the property that the edges and textures are similar in the RGB channels, and the results of those methods may lead to color artifacts. Aiming to solve these problems, we propose a new super-resolution method based on cross channel prior. First, a cross channel prior is proposed to describe the similarity of gradient in RGB channels. Then, a new super-resolution method is proposed for color images via combination of the cross channel prior and the traditional super-resolution methods. Finally, the proposed method reconstructs the color channels alternately. The experimental results show that the proposed method could effectively suppress the generation of color artifacts and improve the quality of the reconstructed images.
Highlights
Image super-resolution (SR) is an effective image enhancement technology
The algorithm results are evaluated by the objective evaluation methods peak signal to noise ratio (PSNR) and structural similarity (SSIM) [31]
Four HR images with the size 256 × 256 are used as original images for simulation experiments
Summary
Image super-resolution (SR) is an effective image enhancement technology. It uses mathematical methods to increase image resolution without changing the imaging system hardware. It has great advantages in terms of technology and cost, and is widely used in scientific research and engineering [1,2]. Traditional SR methods are mainly based on gray images. Color images could provide more information and are widely used in digital television, remote sensing, medical imaging, and cultural relic protection and display [3,4,5]. Color image SR is gradually becoming a new direction of SR research
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