Denoising Process
Denoising, the process of removing unwanted noise from signals or images to reveal underlying patterns, is a fundamental problem across numerous scientific disciplines. Current research focuses on developing advanced denoising techniques using deep learning models, such as U-Nets, diffusion models, and plug-and-play algorithms, often integrating denoising with other tasks like classification or demosaicing for improved efficiency and robustness. These advancements are significantly impacting various fields, from medical imaging (e.g., enhancing OCT scans) and bioacoustics (denoising animal vocalizations) to improving the accuracy and efficiency of machine learning models themselves. The development of novel architectures and algorithms continues to push the boundaries of denoising performance and applicability.
Papers
Patch-based adaptive temporal filter and residual evaluation
Weiying Zhao, Paul Riot, Charles-Alban Deledalle, Henri Maître, Jean-Marie Nicolas, Florence Tupin
Fast Window-Based Event Denoising with Spatiotemporal Correlation Enhancement
Huachen Fang, Jinjian Wu, Qibin Hou, Weisheng Dong, Guangming Shi
Masked Pre-trained Model Enables Universal Zero-shot Denoiser
Xiaoxiao Ma, Zhixiang Wei, Yi Jin, Pengyang Ling, Tianle Liu, Ben Wang, Junkang Dai, Huaian Chen, Enhong Chen
VJT: A Video Transformer on Joint Tasks of Deblurring, Low-light Enhancement and Denoising
Yuxiang Hui, Yang Liu, Yaofang Liu, Fan Jia, Jinshan Pan, Raymond Chan, Tieyong Zeng