CVGRLGAug 20, 2018

Video-to-Video Synthesis

arXiv:1808.06601v21084 citations
Originality Highly original
AI Analysis

It addresses the challenge of generating realistic videos from inputs like segmentation masks, which is important for applications in video editing and simulation, representing a significant advancement over previous methods.

The paper tackles the problem of video-to-video synthesis by learning a mapping from source videos to photorealistic outputs, achieving high-resolution, temporally coherent results, including 2K resolution videos up to 30 seconds long that advance the state-of-the-art.

We study the problem of video-to-video synthesis, whose goal is to learn a mapping function from an input source video (e.g., a sequence of semantic segmentation masks) to an output photorealistic video that precisely depicts the content of the source video. While its image counterpart, the image-to-image synthesis problem, is a popular topic, the video-to-video synthesis problem is less explored in the literature. Without understanding temporal dynamics, directly applying existing image synthesis approaches to an input video often results in temporally incoherent videos of low visual quality. In this paper, we propose a novel video-to-video synthesis approach under the generative adversarial learning framework. Through carefully-designed generator and discriminator architectures, coupled with a spatio-temporal adversarial objective, we achieve high-resolution, photorealistic, temporally coherent video results on a diverse set of input formats including segmentation masks, sketches, and poses. Experiments on multiple benchmarks show the advantage of our method compared to strong baselines. In particular, our model is capable of synthesizing 2K resolution videos of street scenes up to 30 seconds long, which significantly advances the state-of-the-art of video synthesis. Finally, we apply our approach to future video prediction, outperforming several state-of-the-art competing systems.

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