A review of the deep learning methods for medical images super resolution problems

Y Li, B Sixou, F Peyrin - Irbm, 2021 - Elsevier
Super resolution problems are widely discussed in medical imaging. Spatial resolution of
medical images are not sufficient due to the constraints such as image acquisition time, low …

[HTML][HTML] A novel deep learning conditional generative adversarial network for producing angiography images from retinal fundus photographs

A Tavakkoli, SA Kamran, KF Hossain… - Scientific Reports, 2020 - nature.com
Fluorescein angiography (FA) is a procedure used to image the vascular structure of the
retina and requires the insertion of an exogenous dye with potential adverse side effects …

Infrared small target detection based on multiscale local contrast learning networks

C Yu, Y Liu, S Wu, Z Hu, X Xia, D Lan, X Liu - Infrared Physics & Technology, 2022 - Elsevier
Recently, model-driven deep networks have achieved excellent detection performance on
infrared small targets in cluttered environments. However, its detection performance is …

Automatic defect depth estimation for ultrasonic testing in carbon fiber reinforced composites using deep learning

X Cheng, G Ma, Z Wu, H Zu, X Hu - Ndt & E International, 2023 - Elsevier
Ultrasonic testing (UT) is commonly used to inspect the geometric shape of internal damage
in composite materials and the test results need to be interpreted by trained experts. In this …

Deep coordinate attention network for single image super‐resolution

C Xie, H Zhu, Y Fei - IET Image Processing, 2022 - Wiley Online Library
Deep learning techniques and deep networks have recently been extensively studied and
widely applied to single image super‐resolution (SR). Among them, channel attention has …

Discriminative deep multi-task learning for facial expression recognition

H Zheng, R Wang, W Ji, M Zong, WK Wong, Z Lai… - Information Sciences, 2020 - Elsevier
Deep multi-task learning (DMTL) is an efficient machine learning technique that has been
widely utilized for facial expression recognition. However, current deep multi-task learning …

Balanced spatial feature distillation and pyramid attention network for lightweight image super-resolution

G Gendy, N Sabor, J Hou, G He - Neurocomputing, 2022 - Elsevier
Recently, the attention mechanism became the key issue for image super-resolution (SR)
because it has the ability to extract different features from the image according to the used …

SODAS-Net: side-information-aided deep adaptive shrinkage network for compressive sensing

J Song, J Zhang - IEEE Transactions on Instrumentation and …, 2023 - ieeexplore.ieee.org
As a kind of network structure increasingly studied in compressive sensing (CS), deep
unfolding networks (DUNs), which unroll the iterative reconstruction procedure as deep …

Multi-depth branch network for efficient image super-resolution

H Tian, L Zhang, S Li, M Yao, G Pan - Image and Vision Computing, 2024 - Elsevier
A longstanding challenge in Super-Resolution (SR) is how to efficiently enhance high-
frequency details in Low-Resolution (LR) images while maintaining semantic coherence …

Deep learning methods in real-time image super-resolution: a survey

X Li, Y Wu, W Zhang, R Wang, F Hou - Journal of Real-Time Image …, 2020 - Springer
Super-resolution is generally defined as a process to obtain high-resolution images form
inputs of low-resolution observations, which has attracted quantity of attention from …