Low-resolution image enhancement has long been in the public’s consciousness. Television shows, movies, and other forms of fiction have long imagined improving the quality of blurry or distorted images. This bold new technology has finally become available with the help of machine learning. Generative Adversarial Networks (GANs) hold the potential to achieve that which was thought to only exist in fiction. The GANs ability to enhance image quality without affecting the cost of the image gives it a unique opportunity to benefit many industries. Law enforcement could identify criminals with better accuracy. Internet Service Providers could transmit at lower resolutions, with the signal being upscaled to the desired resolution on the client’s ...
The paper is devoted to machine learning methods that focus on texture-type image enhancements, name...
Super-resolution is one of the frequently investigated methods of image processing. The quality of t...
Computer vision is one of the hottest research fields in deep learning. The emergence of generative ...
Low-resolution image enhancement has long been in the public’s consciousness. Television shows, movi...
The research focuses on applying Generative Adversarial Networks (GANs) [1] to enhance the clarity o...
Our research focuses on optimizing the performance of Generative Adversarial Networks to increase im...
Image superresolution (SR) is the process of enlarging and enhancing a low-resolution image. Image s...
Aside from enhancing the accuracy and speed of single picture modification utilizing fast and in-dep...
In recent years, the interest in image super-resolution is increased sharply developing the field of...
This thesis focuses primarily on enhancing the image quality of blurred license plates through the u...
The generative adversarial network (GAN) has demonstrated superb performance in generating synthetic...
The ability to identify and treat a variety of medical diseases is made possible by medical imaging,...
The quality of images produced by generative adversarial networks (GAN) is commonly a trade-off betw...
Single image super-resolution (SISR) has played an important role in the field of image processing. ...
Identifying tiny objects with extremely low resolution is generally considered a very challenging ta...
The paper is devoted to machine learning methods that focus on texture-type image enhancements, name...
Super-resolution is one of the frequently investigated methods of image processing. The quality of t...
Computer vision is one of the hottest research fields in deep learning. The emergence of generative ...
Low-resolution image enhancement has long been in the public’s consciousness. Television shows, movi...
The research focuses on applying Generative Adversarial Networks (GANs) [1] to enhance the clarity o...
Our research focuses on optimizing the performance of Generative Adversarial Networks to increase im...
Image superresolution (SR) is the process of enlarging and enhancing a low-resolution image. Image s...
Aside from enhancing the accuracy and speed of single picture modification utilizing fast and in-dep...
In recent years, the interest in image super-resolution is increased sharply developing the field of...
This thesis focuses primarily on enhancing the image quality of blurred license plates through the u...
The generative adversarial network (GAN) has demonstrated superb performance in generating synthetic...
The ability to identify and treat a variety of medical diseases is made possible by medical imaging,...
The quality of images produced by generative adversarial networks (GAN) is commonly a trade-off betw...
Single image super-resolution (SISR) has played an important role in the field of image processing. ...
Identifying tiny objects with extremely low resolution is generally considered a very challenging ta...
The paper is devoted to machine learning methods that focus on texture-type image enhancements, name...
Super-resolution is one of the frequently investigated methods of image processing. The quality of t...
Computer vision is one of the hottest research fields in deep learning. The emergence of generative ...