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Explorative Inbetweening of Time and Space

About

We introduce bounded generation as a generalized task to control video generation to synthesize arbitrary camera and subject motion based only on a given start and end frame. Our objective is to fully leverage the inherent generalization capability of an image-to-video model without additional training or fine-tuning of the original model. This is achieved through the proposed new sampling strategy, which we call Time Reversal Fusion, that fuses the temporally forward and backward denoising paths conditioned on the start and end frame, respectively. The fused path results in a video that smoothly connects the two frames, generating inbetweening of faithful subject motion, novel views of static scenes, and seamless video looping when the two bounding frames are identical. We curate a diverse evaluation dataset of image pairs and compare against the closest existing methods. We find that Time Reversal Fusion outperforms related work on all subtasks, exhibiting the ability to generate complex motions and 3D-consistent views guided by bounded frames. See project page at https://time-reversal.github.io.

Haiwen Feng, Zheng Ding, Zhihao Xia, Simon Niklaus, Victoria Abrevaya, Michael J. Black, Xuaner Zhang• 2024

Related benchmarks

TaskDatasetResultRank
Video Frame InterpolationMultiInterpBench
FID47.3
24
Video Frame InterpolationBS-ERGB 3 skips
PSNR17.86
15
Video Frame InterpolationHQF 3 skips
PSNR17.92
9
Video Frame InterpolationClear-Motion 15 skips
PSNR13.71
9
Video Frame InterpolationDAVIS 100 video-keyframe pairs 2017
LPIPS0.3127
8
Video Frame InterpolationPexels 45 video-keyframe pairs
LPIPS0.2044
8
Video InbetweeningDAVIS
Alignment-0.3119
8
Video Frame Interpolation10 re-collected videos high-ratio interpolation (test)
FID38.2
6
Video GenerationTGI-Bench 65-frame
PSNR16.06
6
Video GenerationTGI-Bench 81-frame
PSNR16.08
6
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