Title
Fast-Vid2Vid: Spatial-Temporal Compression for Video-to-Video Synthesis.
Abstract
Video-to-Video synthesis (Vid2Vid) has achieved remarkable results in generating a photo-realistic video from a sequence of semantic maps. However, this pipeline suffers from high computational cost and long inference latency, which largely depends on two essential factors: 1) network architecture parameters, 2) sequential data stream. Recently, the parameters of image-based generative models have been significantly compressed via more efficient network architectures. Existing methods mainly focus on slimming network architectures and ignore the size of the sequential data stream. Moreover, due to the lack of temporal coherence, image-based compression is not sufficient for the compression of the video task. In this paper, we present a spatial-temporal compression framework, Fast-Vid2Vid, which focuses on data aspects of generative models. It makes the first attempt at time dimension to reduce computational resources and accelerate inference. Specifically, we compress the input data stream spatially and reduce the temporal redundancy. After the proposed spatial-temporal knowledge distillation, our model can synthesize key-frames using the low-resolution data stream. Finally, Fast-Vid2Vid interpolates intermediate frames by motion compensation with slight latency. On standard benchmarks, Fast-Vid2Vid achieves around real-time performance as 20 FPS and saves around \(8\times \) computational cost on a single V100 GPU. Code and models are publicly available (Project page: https://fast-vid2vid.github.io/, Code and models: https://github.com/fast-vid2vid/fast-vid2vid).
Year
DOI
Venue
2022
10.1007/978-3-031-19784-0_17
European Conference on Computer Vision
Keywords
DocType
Citations 
Video-to-video synthesis,GAN compression
Conference
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Long Zhuo100.34
Guangcong Wang200.68
Shikai Li300.68
Wenyan Wu4197.34
Ziwei Liu5136163.23