Leveraging on recent advances in deep convolutional neural networks (CNNs), single image deraining has been studied as a learning task, achieving an outstanding performance over traditional hand-designed approaches. Current CNNs based deraining approaches adopt the supervised learning framework that uses a massive training data generated with synthetic rain streaks, having a limited generalization ability on real rainy images. To address this problem, we propose a novel learning framework for single image deraining that leverages time-lapse sequences instead of the synthetic image pairs. The deraining networks are trained using the time-lapse sequences in which both camera and scenes are static except for time-varying rain streaks. Specific...
The raindrop adhered to a camera lens could severely degrade images it captured, because that the ra...
Recent single image deraining methods either use a recurrent mechanism to gradually learn the mappin...
A recent line of convolutional neural network-based works has succeeded in capturing rain streaks. H...
For current learning-based single image deraining methods, deraining networks are usually designed b...
Single image deraining is a challenging problem due to the presence of non-uniform rain densities an...
Single Image Deraining (SID) is a relatively new and still challenging topic in emerging vision appl...
Existing neural network-based methods for de-raining single images exhibit dissatisfactory results o...
Although advanced single image deraining methods have been proposed, one main challenge remains: the...
Abstract As the basis of image processing, single image deraining has always been a significant and ...
Rainy degeneration damages an image’s visual effect and influences the performance of subsequent vis...
Self-supervised methods have shown promising results in denoising and dehazing tasks, where the coll...
Since rain streaks exhibit diverse geometric appearances and irregular overlapped phenomena, these c...
As a common weather, rain streaks adversely degrade the image quality. Hence, removing rains from an...
Existing deraining approaches represent rain streaks with different rain layers and then separate th...
Most outdoor vision systems can be influenced by rainy weather conditions. We present a single-image...
The raindrop adhered to a camera lens could severely degrade images it captured, because that the ra...
Recent single image deraining methods either use a recurrent mechanism to gradually learn the mappin...
A recent line of convolutional neural network-based works has succeeded in capturing rain streaks. H...
For current learning-based single image deraining methods, deraining networks are usually designed b...
Single image deraining is a challenging problem due to the presence of non-uniform rain densities an...
Single Image Deraining (SID) is a relatively new and still challenging topic in emerging vision appl...
Existing neural network-based methods for de-raining single images exhibit dissatisfactory results o...
Although advanced single image deraining methods have been proposed, one main challenge remains: the...
Abstract As the basis of image processing, single image deraining has always been a significant and ...
Rainy degeneration damages an image’s visual effect and influences the performance of subsequent vis...
Self-supervised methods have shown promising results in denoising and dehazing tasks, where the coll...
Since rain streaks exhibit diverse geometric appearances and irregular overlapped phenomena, these c...
As a common weather, rain streaks adversely degrade the image quality. Hence, removing rains from an...
Existing deraining approaches represent rain streaks with different rain layers and then separate th...
Most outdoor vision systems can be influenced by rainy weather conditions. We present a single-image...
The raindrop adhered to a camera lens could severely degrade images it captured, because that the ra...
Recent single image deraining methods either use a recurrent mechanism to gradually learn the mappin...
A recent line of convolutional neural network-based works has succeeded in capturing rain streaks. H...