AttT2M: Text-Driven Human Motion Generation with Multi-Perspective Attention Mechanism

ICCV 2023  ·  Chongyang Zhong, Lei Hu, Zihao Zhang, Shihong Xia ·

Generating 3D human motion based on textual descriptions has been a research focus in recent years. It requires the generated motion to be diverse, natural, and conform to the textual description. Due to the complex spatio-temporal nature of human motion and the difficulty in learning the cross-modal relationship between text and motion, text-driven motion generation is still a challenging problem. To address these issues, we propose \textbf{AttT2M}, a two-stage method with multi-perspective attention mechanism: \textbf{body-part attention} and \textbf{global-local motion-text attention}. The former focuses on the motion embedding perspective, which means introducing a body-part spatio-temporal encoder into VQ-VAE to learn a more expressive discrete latent space. The latter is from the cross-modal perspective, which is used to learn the sentence-level and word-level motion-text cross-modal relationship. The text-driven motion is finally generated with a generative transformer. Extensive experiments conducted on HumanML3D and KIT-ML demonstrate that our method outperforms the current state-of-the-art works in terms of qualitative and quantitative evaluation, and achieve fine-grained synthesis and action2motion. Our code is in https://github.com/ZcyMonkey/AttT2M

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Motion Synthesis HumanML3D AttT2M FID 0.112 # 10
Diversity 9.700 # 7
Multimodality 2.452 # 5
R Precision Top3 0.786 # 9
Motion Synthesis KIT Motion-Language AttT2M FID 0.870 # 16
R Precision Top3 0.751 # 7
Diversity 10.96 # 4
Multimodality 2.281 # 5

Methods