DreaMoving: A Human Dance Video Generation Framework based on Diffusion Models
Abstract
In this paper, we present DreaMoving, a diffusion-based controllable video generation framework to produce high-quality customized human dance videos. Specifically, given target identity and posture sequences, DreaMoving can generate a video of the target identity dancing anywhere driven by the posture sequences. To this end, we propose a Video ControlNet for motion-controlling and a Content Guider for identity preserving. The proposed model is easy to use and can be adapted to most stylized diffusion models to generate diverse results. The project page is available at https://dreamoving.github.io/dreamoving.
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Hey, I think your author Chen Shi mistakenly linked to me
Hey, I think your author Chen Shi mistakenly linked to me
Hey! Thanks for letting us know. We wiill remove the authorship from your account. : )
Interesting but please stop call this kind of mouvement dance. This is quite insulting. Call it mouvement on rythme but this is definitely not dance.
Hello, fantastic work!! Is there any plan to release the code and model to allow in-house implementation?
Hi there,
I want to use DreaMoving, can you share the app link please?
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