VideoGigaGAN: Towards Detail-rich Video Super-Resolution

27citations
arXiv:2404.12388
27
citations
#270
in CVPR 2025
of 2873 papers
8
Top Authors
7
Data Points

Abstract

Video super-resolution (VSR) approaches have shown impressive temporal consistency in upsampled videos. However, these approaches tend to generate blurrier results than their image counterparts as they are limited in their generative capability. This raises a fundamental question: can we extend the success of a generative image upsampler to the VSR task while preserving the temporal consistency? We introduce VideoGigaGAN, a new generative VSR model that can produce videos with high-frequency details and temporal consistency. VideoGigaGAN builds upon a large-scale image upsampler -- GigaGAN. Simply inflating GigaGAN to a video model by adding temporal modules produces severe temporal flickering. We identify several key issues and propose techniques that significantly improve the temporal consistency of upsampled videos. Our experiments show that, unlike previous VSR methods, VideoGigaGAN generates temporally consistent videos with more fine-grained appearance details. We validate the effectiveness of VideoGigaGAN by comparing it with state-of-the-art VSR models on public datasets and showcasing video results with $8\times$ super-resolution.

Citation History

Jan 26, 2026
0
Jan 26, 2026
0
Jan 27, 2026
0
Feb 3, 2026
26+26
Feb 13, 2026
27+1
Feb 13, 2026
27
Feb 13, 2026
27