Single image dehazing has become a key prerequisite for most high-level computer vision tasks since haze severely degrades the input images. Traditional prior-based methods dehaze images by some assumptions concluded from haze-free images, which recover high-quality results but always cause some halos or color distortion. Recently, many methods have been using convolutional neural networks to learn the haze-relevant features and then retrieve the original images. These learning-based methods achieve better performance in synthetic scenes but can hardly restore a clear image with discriminative texture when applied to real-world images, mainly because these networks are trained on synthetic datasets. To solve these problems, a self-modulated...
Abstract Single‐image dehazing is an important problem because it is a key prerequisite for most hig...
The rapid growth in computer vision applications that are affected by environmental conditions chall...
Abundant training data for deep neural networks improve the performance of single image dehazing (SI...
Images taken in haze weather are characteristic of low contrast and poor visibility. The conventiona...
Recently, convolutional neural networks (CNNs) have achieved great improvements in single image deha...
Single image dehazing is a highly challenging ill-posed problem. Existing methods including both pri...
The presence of haze will significantly reduce the quality of images, such as resulting in lower con...
The existing image dehazing algorithms rely heavily on the accurate estimation of the intermediate v...
Presence of haze in images obscures underlying information, which is undesirable in applications req...
Dehazing refers to removing the haze and restoring the details from hazy images. In this paper, we p...
Haze contains floating particles in the air which can result in image quality degradation and visibi...
Image-to-image translation based on generative adversarial network (GAN) has achieved state-of-the-a...
The purpose of image dehazing is the reduction of the image degradation caused by suspended particle...
Traditional image dehazing algorithms based on prior knowledge and deep learning rely on the atmosph...
Dehazing is an important pre-processing step in almost all computer vision systems deployed in outdo...
Abstract Single‐image dehazing is an important problem because it is a key prerequisite for most hig...
The rapid growth in computer vision applications that are affected by environmental conditions chall...
Abundant training data for deep neural networks improve the performance of single image dehazing (SI...
Images taken in haze weather are characteristic of low contrast and poor visibility. The conventiona...
Recently, convolutional neural networks (CNNs) have achieved great improvements in single image deha...
Single image dehazing is a highly challenging ill-posed problem. Existing methods including both pri...
The presence of haze will significantly reduce the quality of images, such as resulting in lower con...
The existing image dehazing algorithms rely heavily on the accurate estimation of the intermediate v...
Presence of haze in images obscures underlying information, which is undesirable in applications req...
Dehazing refers to removing the haze and restoring the details from hazy images. In this paper, we p...
Haze contains floating particles in the air which can result in image quality degradation and visibi...
Image-to-image translation based on generative adversarial network (GAN) has achieved state-of-the-a...
The purpose of image dehazing is the reduction of the image degradation caused by suspended particle...
Traditional image dehazing algorithms based on prior knowledge and deep learning rely on the atmosph...
Dehazing is an important pre-processing step in almost all computer vision systems deployed in outdo...
Abstract Single‐image dehazing is an important problem because it is a key prerequisite for most hig...
The rapid growth in computer vision applications that are affected by environmental conditions chall...
Abundant training data for deep neural networks improve the performance of single image dehazing (SI...