Temporal Resolution

Temporal resolution, the precision with which events or changes are located in time, is a critical factor across diverse scientific fields, impacting data analysis and model accuracy. Current research focuses on enhancing temporal resolution in various modalities, including video, audio, and sensor data, often employing deep learning architectures like convolutional recurrent neural networks, transformers, and diffusion models to improve data processing and reconstruction. These advancements are significantly improving the quality of data analysis in applications ranging from video deblurring and super-resolution to sound event detection and rainfall forecasting, ultimately leading to more accurate and informative results.

Papers