Image Quality
Image quality assessment (IQA) focuses on objectively measuring and improving the visual fidelity of images, crucial for various applications from medical imaging to autonomous driving. Current research emphasizes developing robust no-reference IQA methods, often employing deep learning architectures like transformers and convolutional neural networks, and exploring the use of generative AI models for image enhancement and compression. These advancements are significant because they enable automated quality control, improved diagnostic accuracy in healthcare, and more efficient data management across numerous fields.
Papers
Real-Time Multi-Scene Visibility Enhancement for Promoting Navigational Safety of Vessels Under Complex Weather Conditions
Ryan Wen Liu, Yuxu Lu, Yuan Gao, Yu Guo, Wenqi Ren, Fenghua Zhu, Fei-Yue Wang
MobileIQA: Exploiting Mobile-level Diverse Opinion Network For No-Reference Image Quality Assessment Using Knowledge Distillation
Zewen Chen, Sunhan Xu, Yun Zeng, Haochen Guo, Jian Guo, Shuai Liu, Juan Wang, Bing Li, Weiming Hu, Dehua Liu, Hesong Li