Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Learning Truncated Causal History Model for Video Restoration

About

One key challenge to video restoration is to model the transition dynamics of video frames governed by motion. In this work, we propose TURTLE to learn the truncated causal history model for efficient and high-performing video restoration. Unlike traditional methods that process a range of contextual frames in parallel, TURTLE enhances efficiency by storing and summarizing a truncated history of the input frame latent representation into an evolving historical state. This is achieved through a sophisticated similarity-based retrieval mechanism that implicitly accounts for inter-frame motion and alignment. The causal design in TURTLE enables recurrence in inference through state-memorized historical features while allowing parallel training by sampling truncated video clips. We report new state-of-the-art results on a multitude of video restoration benchmark tasks, including video desnowing, nighttime video deraining, video raindrops and rain streak removal, video super-resolution, real-world and synthetic video deblurring, and blind video denoising while reducing the computational cost compared to existing best contextual methods on all these tasks.

Amirhosein Ghasemabadi, Muhammad Kamran Janjua, Mohammad Salameh, Di Niu• 2024

Related benchmarks

TaskDatasetResultRank
Motion DeblurringSportsSloMo-CVS N=9 (test)
PSNR38.52
9
Motion DeblurringSportsSloMo-CVS N=5 (test)
PSNR39.37
9
Motion DeblurringSportsSloMo-CVS N=7 (test)
PSNR39.35
9
Motion DeblurringSportsSloMo-CVS N=11 (test)
PSNR37.73
9
Video DerainingWeatherBench real-world
PSNR22.48
9
Video DerainingNTURain
Parameters (M)5.86e+7
9
Video DerainingSyn-Light
PSNR21.16
9
Video DerainingSyn-Complex
PSNR14.12
9
Showing 8 of 8 rows

Other info

Code

Follow for update