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arXiv 提交日期: 2026-03-23
📄 Abstract - UniMotion: A Unified Framework for Motion-Text-Vision Understanding and Generation

We present UniMotion, to our knowledge the first unified framework for simultaneous understanding and generation of human motion, natural language, and RGB images within a single architecture. Existing unified models handle only restricted modality subsets (e.g., Motion-Text or static Pose-Image) and predominantly rely on discrete tokenization, which introduces quantization errors and disrupts temporal continuity. UniMotion overcomes both limitations through a core principle: treating motion as a first-class continuous modality on equal footing with RGB. A novel Cross-Modal Aligned Motion VAE (CMA-VAE) and symmetric dual-path embedders construct parallel continuous pathways for Motion and RGB within a shared LLM backbone. To inject visual-semantic priors into motion representations without requiring images at inference, we propose Dual-Posterior KL Alignment (DPA), which distills a vision-fused encoder's richer posterior into the motion-only encoder. To address the cold-start problem -- where text supervision alone is too sparse to calibrate the newly introduced motion pathway -- we further propose Latent Reconstruction Alignment (LRA), a self-supervised pre-training strategy that uses dense motion latents as unambiguous conditions to co-calibrate the embedder, backbone, and flow head, establishing a stable motion-aware foundation for all downstream tasks. UniMotion achieves state-of-the-art performance across seven tasks spanning any-to-any understanding, generation, and editing among the three modalities, with especially strong advantages on cross-modal compositional tasks.

顶级标签: multi-modal computer vision model training
详细标签: motion generation cross-modal alignment continuous representation human motion unified framework 或 搜索:

UniMotion:一个用于运动-文本-视觉理解与生成的统一框架 / UniMotion: A Unified Framework for Motion-Text-Vision Understanding and Generation


1️⃣ 一句话总结

这篇论文提出了首个能同时理解和生成人体运动、自然语言和RGB图像的统一框架,通过将运动视为与视觉同等的连续信号并采用新颖的训练策略,在多种跨模态任务上取得了领先性能。

源自 arXiv: 2603.22282