CVJun 17, 2025

Toward Rich Video Human-Motion2D Generation

arXiv:2506.14428v12 citationsh-index: 7
Originality Incremental advance
AI Analysis

This work addresses data scarcity and modeling complexities for human motion generation, particularly in interactive scenarios, though it is incremental as it builds upon existing diffusion methods.

The paper tackles the challenge of generating realistic and controllable human motions, especially for multi-character interactions, by introducing a new large-scale dataset (Motion2D-Video-150K) and a diffusion-based model (RVHM2D) that achieves leading performance on this benchmark.

Generating realistic and controllable human motions, particularly those involving rich multi-character interactions, remains a significant challenge due to data scarcity and the complexities of modeling inter-personal dynamics. To address these limitations, we first introduce a new large-scale rich video human motion 2D dataset (Motion2D-Video-150K) comprising 150,000 video sequences. Motion2D-Video-150K features a balanced distribution of diverse single-character and, crucially, double-character interactive actions, each paired with detailed textual descriptions. Building upon this dataset, we propose a novel diffusion-based rich video human motion2D generation (RVHM2D) model. RVHM2D incorporates an enhanced textual conditioning mechanism utilizing either dual text encoders (CLIP-L/B) or T5-XXL with both global and local features. We devise a two-stage training strategy: the model is first trained with a standard diffusion objective, and then fine-tuned using reinforcement learning with an FID-based reward to further enhance motion realism and text alignment. Extensive experiments demonstrate that RVHM2D achieves leading performance on the Motion2D-Video-150K benchmark in generating both single and interactive double-character scenarios.

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