Low-light image enhancement is rapidly gaining research attention due to the increasing demands of extreme visual tasks in various applications. Although numerous methods exist to enhance image qualities in low light, it is still undetermined how to trade-off between the human observation and computer vision processing. In this work, an effective generative adversarial network structure is proposed comprising both the densely residual block (DRB) and the enhancing block (EB) for low-light image enhancement. Specifically, the proposed end-to-end image enhancement method, consisting of a generator and a discriminator, is trained using the hyper loss function. The DRB adopts the residual and dense skip connections to connect and enhance the fe...
Dealing with low-light images is a challenging problem in the image processing field. A mature low-l...
The computer vision technology is applied more and more extensively. In order to improve the effecti...
The research focuses on applying Generative Adversarial Networks (GANs) [1] to enhance the clarity o...
Though learning-based low-light enhancement methods have achieved significant success, existing met...
Images captured in weak illumination conditions could seriously degrade the image quality. Solving a...
As a critical preprocessing technique, low-illumination image enhancement has a wide range of practi...
Abstract Uneven lighting conditions often occur during real-life photography, such as images taken a...
Weak illumination or low light image enhancement as pre-processing is needed in many computer vision...
Images obtained in low-light scenes are often accompanied by problems such as low visibility, blurre...
Nighttime environments with sub-optimal lighting conditions significantly degrade the quality of cap...
Images captured in low-light environments have problems of insufficient brightness and low contrast,...
Images obtained in low-light scenes are often accompanied by problems such as low visibility, blurre...
Images obtained in low-light scenes are often accompanied by problems such as low visibility, blurre...
Images obtained in low-light scenes are often accompanied by problems such as low visibility, blurre...
Due to the cost limitation of camera sensors, images captured in low-light environments often suffer...
Dealing with low-light images is a challenging problem in the image processing field. A mature low-l...
The computer vision technology is applied more and more extensively. In order to improve the effecti...
The research focuses on applying Generative Adversarial Networks (GANs) [1] to enhance the clarity o...
Though learning-based low-light enhancement methods have achieved significant success, existing met...
Images captured in weak illumination conditions could seriously degrade the image quality. Solving a...
As a critical preprocessing technique, low-illumination image enhancement has a wide range of practi...
Abstract Uneven lighting conditions often occur during real-life photography, such as images taken a...
Weak illumination or low light image enhancement as pre-processing is needed in many computer vision...
Images obtained in low-light scenes are often accompanied by problems such as low visibility, blurre...
Nighttime environments with sub-optimal lighting conditions significantly degrade the quality of cap...
Images captured in low-light environments have problems of insufficient brightness and low contrast,...
Images obtained in low-light scenes are often accompanied by problems such as low visibility, blurre...
Images obtained in low-light scenes are often accompanied by problems such as low visibility, blurre...
Images obtained in low-light scenes are often accompanied by problems such as low visibility, blurre...
Due to the cost limitation of camera sensors, images captured in low-light environments often suffer...
Dealing with low-light images is a challenging problem in the image processing field. A mature low-l...
The computer vision technology is applied more and more extensively. In order to improve the effecti...
The research focuses on applying Generative Adversarial Networks (GANs) [1] to enhance the clarity o...