OpenT2M: No-frill Motion Generation with Open-source,Large-scale, High-quality Data
arXiv cs.CV / 3/20/2026
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Key Points
- OpenT2M introduces a million-level, high-quality open-source motion dataset with over 2800 hours of human motion to improve generalization in text-to-motion models.
- The dataset undergoes rigorous quality control, including physical feasibility validation and multi-granularity filtering, with second-wise text annotations.
- A new pretrained motion model, MonoFrill, uses a novel 2D-PRQ motion tokenizer that divides the body into biological parts to capture spatiotemporal dependencies and achieves strong reconstruction and zero-shot performance.
- The authors provide an automated pipeline for long-horizon motion generation and expect OpenT2M and MonoFrill to advance T2M benchmarking and data-quality standards.
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