Low Resolution
Low-resolution image processing focuses on improving the quality and usability of images with limited resolution, addressing challenges in various fields from medical imaging to object recognition. Current research emphasizes developing advanced deep learning models, including transformers and diffusion models, along with knowledge distillation techniques to enhance performance, particularly in scenarios with limited training data or noisy inputs. These advancements are crucial for improving the accuracy and efficiency of applications relying on low-resolution data, such as medical diagnosis, autonomous driving, and remote sensing, where high-resolution data may be unavailable or impractical to acquire. The development of robust and efficient methods for handling low-resolution data is a significant area of ongoing research with broad practical implications.
Papers
Super-resolving Real-world Image Illumination Enhancement: A New Dataset and A Conditional Diffusion Model
Yang Liu, Yaofang Liu, Jinshan Pan, Yuxiang Hui, Fan Jia, Raymond H. Chan, Tieyong Zeng
Transformer based super-resolution downscaling for regional reanalysis: Full domain vs tiling approaches
Antonio Pérez, Mario Santa Cruz, Daniel San Martín, José Manuel Gutiérrez
Denoising diffusion models for high-resolution microscopy image restoration
Pamela Osuna-Vargas, Maren H. Wehrheim, Lucas Zinz, Johanna Rahm, Ashwin Balakrishnan, Alexandra Kaminer, Mike Heilemann, Matthias Kaschube
Efficient Low-Resolution Face Recognition via Bridge Distillation
Shiming Ge, Shengwei Zhao, Chenyu Li, Yu Zhang, Jia Li