Ada-VSR: Adaptive Video Super-Resolution with Meta-Learning
Akash Gupta, Padmaja Jonnalagedda, Bir Bhanu, Amit K. Roy-Chowdhury

TL;DR
Ada-VSR introduces a meta-learning based approach for video super-resolution that efficiently adapts to specific video degradation conditions by combining external and internal information, significantly reducing inference time.
Contribution
The paper proposes a novel meta-transfer learning framework that enables rapid adaptation to individual videos for super-resolution, integrating external data and internal video statistics.
Findings
Outperforms state-of-the-art methods on standard datasets.
Achieves faster adaptation with fewer gradient updates.
Effectively exploits both external and internal video information.
Abstract
Most of the existing works in supervised spatio-temporal video super-resolution (STVSR) heavily rely on a large-scale external dataset consisting of paired low-resolution low-frame rate (LR-LFR)and high-resolution high-frame-rate (HR-HFR) videos. Despite their remarkable performance, these methods make a prior assumption that the low-resolution video is obtained by down-scaling the high-resolution video using a known degradation kernel, which does not hold in practical settings. Another problem with these methods is that they cannot exploit instance-specific internal information of video at testing time. Recently, deep internal learning approaches have gained attention due to their ability to utilize the instance-specific statistics of a video. However, these methods have a large inference time as they require thousands of gradient updates to learn the intrinsic structure of the data.…
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