CVCLMar 26

Bilingual Text-to-Motion Generation: A New Benchmark and Baselines

arXiv:2603.2517872.4h-index: 6
AI Analysis

It addresses the lack of bilingual datasets and poor cross-lingual understanding in motion generation, enabling applications in multilingual contexts.

The paper tackles the problem of text-to-motion generation for bilingual applications by introducing BiHumanML3D, the first bilingual benchmark, and a baseline model BiMD with Cross-Lingual Alignment, achieving an FID of 0.045 and R@3 of 82.8%.

Text-to-motion generation holds significant potential for cross-linguistic applications, yet it is hindered by the lack of bilingual datasets and the poor cross-lingual semantic understanding of existing language models. To address these gaps, we introduce BiHumanML3D, the first bilingual text-to-motion benchmark, constructed via LLM-assisted annotation and rigorous manual correction. Furthermore, we propose a simple yet effective baseline, Bilingual Motion Diffusion (BiMD), featuring Cross-Lingual Alignment (CLA). CLA explicitly aligns semantic representations across languages, creating a robust conditional space that enables high-quality motion generation from bilingual inputs, including zero-shot code-switching scenarios. Extensive experiments demonstrate that BiMD with CLA achieves an FID of 0.045 vs. 0.169 and R@3 of 82.8\% vs. 80.8\%, significantly outperforms monolingual diffusion models and translation baselines on BiHumanML3D, underscoring the critical necessity and reliability of our dataset and the effectiveness of our alignment strategy for cross-lingual motion synthesis. The dataset and code are released at \href{https://wengwanjiang.github.io/BilingualT2M-page}{https://wengwanjiang.github.io/BilingualT2M-page}

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