Seeing Through The Noisy Dark: Toward Real-world Low-Light Image Enhancement and Denoising

10/02/2022
by   Jiahuan Ren, et al.
10

Images collected in real-world low-light environment usually suffer from lower visibility and heavier noise, due to the insufficient light or hardware limitation. While existing low-light image enhancement (LLIE) methods basically ignored the noise interference and mainly focus on refining the illumination of the low-light images based on benchmarked noise-negligible datasets. Such operations will make them inept for the real-world LLIE (RLLIE) with heavy noise, and result in speckle noise and blur in the enhanced images. Although several LLIE methods considered the noise in low-light image, they are trained on the raw data and hence cannot be used for sRGB images, since the domains of data are different and lack of expertise or unknown protocols. In this paper, we clearly consider the task of seeing through the noisy dark in sRGB color space, and propose a novel end-to-end method termed Real-world Low-light Enhancement Denoising Network (RLED-Net). Since natural images can usually be characterized by low-rank subspaces in which the redundant information and noise can be removed, we design a Latent Subspace Reconstruction Block (LSRB) for feature extraction and denoising. To reduce the loss of global feature (e.g., color/shape information) and extract more accurate local features (e.g., edge/texture information), we also present a basic layer with two branches, called Cross-channel Shift-window Transformer (CST). Based on the CST, we further present a new backbone to design a U-structure Network (CSTNet) for deep feature recovery, and also design a Feature Refine Block (FRB) to refine the final features. Extensive experiments on real noisy images and public databases verified the effectiveness of our RLED-Net for both RLLIE and denoising.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 6

page 7

page 8

research
05/20/2020

Attention-based network for low-light image enhancement

The captured images under low light conditions often suffer insufficient...
research
10/03/2021

Adaptive Unfolding Total Variation Network for Low-Light Image Enhancement

Real-world low-light images suffer from two main degradations, namely, i...
research
11/12/2015

LLNet: A Deep Autoencoder Approach to Natural Low-light Image Enhancement

In surveillance, monitoring and tactical reconnaissance, gathering the r...
research
01/25/2021

Joint Denoising and Demosaicking with Green Channel Prior for Real-world Burst Images

Denoising and demosaicking are essential yet correlated steps to reconst...
research
04/04/2023

Self-Supervised Image Denoising for Real-World Images with Context-aware Transformer

In recent years, the development of deep learning has been pushing image...
research
07/08/2020

Designing and Training of A Dual CNN for Image Denoising

Deep convolutional neural networks (CNNs) for image denoising have recen...
research
06/25/2023

Diffusion Model Based Low-Light Image Enhancement for Space Satellite

Space-based visible camera is an important sensor for space situation aw...

Please sign up or login with your details

Forgot password? Click here to reset