LaMoGen: Language to Motion Generation Through LLM-Guided Symbolic Inference
arXiv cs.CV / 3/13/2026
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Key Points
- The paper introduces LabanLite, a motion representation that encodes atomic body-part actions as discrete Laban symbols paired with textual templates to improve interpretability and controllability of motion generation.
- It presents LaMoGen, a Text-to-LabanLite-to-Motion framework that uses LLMs to perform symbolic reasoning to compose motion sequences and produce executable, linguistically grounded motions.
- A Labanotation-based benchmark with structured description-motion pairs and three metrics is proposed to evaluate text-motion alignment across symbolic, temporal, and harmony dimensions.
- Experiments show LaMoGen establishes a new baseline for interpretability and controllability, outperforming prior methods on their benchmark and two public datasets.
- The work highlights the benefits of symbolic reasoning and agent-based design for language-driven motion synthesis.
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