Everybody Dance Now
University of California, Berkeley
Abstract
This paper presents a simple method for “do as I do” motion transfer: given a source video of a person dancing, we can transfer that performance to a novel (amateur) target after only a few minutes of the target subject performing standard moves. We approach this problem as video-to-video translation using pose as an intermediate representation. To transfer the motion, we extract poses from the source subject and apply the learned pose-to-appearance mapping to generate the target subject. We predict two consecutive frames for temporally coherent video results and introduce a separate pipeline for realistic face synthesis. Although our method is quite simple, it produces surprisingly compelling results (see…
Citation impact
- FWCI
- 73.67
- Percentile
- 100%
- References
- 64
Authors
4Topics & keywords
- Dance
- Computer science
- Visual arts
- Art