The design of deep learning methods for low light video enhancement remains a challenging problem owing to the difficulty in capturing low light and ground truth video pairs. This is particularly hard in the context of dynamic scenes or moving cameras where a long exposure ground truth cannot be captured. We approach this problem by training a model on static videos such that the model can generalize to dynamic videos. Existing methods adopting this approach operate frame by frame and do not exploit the relationships among neighbouring frames. We overcome this limitation through a selfcross dilated attention module that can effectively learn to use information from neighbouring frames even when dynamics between the frames are different duri...
Deep learning has achieved tremendous success on various computer vision tasks. However, deep learni...
Visual enhancement is concerned with problems to improve the visual quality and viewing experience f...
We suggest representing light field (LF) videos as "one-off" neural networks (NN), i.e., a learned m...
The quality of the image representations obtained from self-supervised learning depends strongly on ...
Given a monocular video, segmenting and decoupling dynamic objects while recovering the static envir...
Contrastive language-image pretraining has shown great success in learning visual-textual joint repr...
Low-light images challenge both human perceptions and computer vision algorithms. It is crucial to m...
Low light conditions not only degrade human visual experience, but also reduce the performance of do...
Super-Resolving (SR) video is more challenging compared with image super-resolution because of the d...
Low-light video enhancement (LLVE) is an important yet challenging task with many applications such ...
Image acquisition in low-light conditions suffers from poor quality and significant degradation in v...
In this work, we contribute to video saliency research in two ways. First, we introduce a new benchm...
As a fundamental task in computer vision, object detection is to locate visual objects of pre-define...
Video frame interpolation algorithms predict intermediate frames to produce videos with higher frame...
Prevailing video frame interpolation techniques rely heavily on optical flow estimation and require ...
Deep learning has achieved tremendous success on various computer vision tasks. However, deep learni...
Visual enhancement is concerned with problems to improve the visual quality and viewing experience f...
We suggest representing light field (LF) videos as "one-off" neural networks (NN), i.e., a learned m...
The quality of the image representations obtained from self-supervised learning depends strongly on ...
Given a monocular video, segmenting and decoupling dynamic objects while recovering the static envir...
Contrastive language-image pretraining has shown great success in learning visual-textual joint repr...
Low-light images challenge both human perceptions and computer vision algorithms. It is crucial to m...
Low light conditions not only degrade human visual experience, but also reduce the performance of do...
Super-Resolving (SR) video is more challenging compared with image super-resolution because of the d...
Low-light video enhancement (LLVE) is an important yet challenging task with many applications such ...
Image acquisition in low-light conditions suffers from poor quality and significant degradation in v...
In this work, we contribute to video saliency research in two ways. First, we introduce a new benchm...
As a fundamental task in computer vision, object detection is to locate visual objects of pre-define...
Video frame interpolation algorithms predict intermediate frames to produce videos with higher frame...
Prevailing video frame interpolation techniques rely heavily on optical flow estimation and require ...
Deep learning has achieved tremendous success on various computer vision tasks. However, deep learni...
Visual enhancement is concerned with problems to improve the visual quality and viewing experience f...
We suggest representing light field (LF) videos as "one-off" neural networks (NN), i.e., a learned m...