CVOct 31, 2025

DANCER: Dance ANimation via Condition Enhancement and Rendering with diffusion model

arXiv:2510.27169v1
Originality Incremental advance
AI Analysis

This work addresses the challenging problem of generating high-quality, continuous human dance videos, which is incremental as it builds on existing stable video diffusion models with novel modules.

The paper tackles realistic single-person dance video synthesis by proposing DANCER, a framework that enhances appearance details and motion guidance using diffusion models, achieving superior performance over state-of-the-art methods on real-world datasets.

Recently, diffusion models have shown their impressive ability in visual generation tasks. Besides static images, more and more research attentions have been drawn to the generation of realistic videos. The video generation not only has a higher requirement for the quality, but also brings a challenge in ensuring the video continuity. Among all the video generation tasks, human-involved contents, such as human dancing, are even more difficult to generate due to the high degrees of freedom associated with human motions. In this paper, we propose a novel framework, named as DANCER (Dance ANimation via Condition Enhancement and Rendering with Diffusion Model), for realistic single-person dance synthesis based on the most recent stable video diffusion model. As the video generation is generally guided by a reference image and a video sequence, we introduce two important modules into our framework to fully benefit from the two inputs. More specifically, we design an Appearance Enhancement Module (AEM) to focus more on the details of the reference image during the generation, and extend the motion guidance through a Pose Rendering Module (PRM) to capture pose conditions from extra domains. To further improve the generation capability of our model, we also collect a large amount of video data from Internet, and generate a novel datasetTikTok-3K to enhance the model training. The effectiveness of the proposed model has been evaluated through extensive experiments on real-world datasets, where the performance of our model is superior to that of the state-of-the-art methods. All the data and codes will be released upon acceptance.

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