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FineMoGen: Fine-Grained Spatio-Temporal Motion Generation and Editing

About

Text-driven motion generation has achieved substantial progress with the emergence of diffusion models. However, existing methods still struggle to generate complex motion sequences that correspond to fine-grained descriptions, depicting detailed and accurate spatio-temporal actions. This lack of fine controllability limits the usage of motion generation to a larger audience. To tackle these challenges, we present FineMoGen, a diffusion-based motion generation and editing framework that can synthesize fine-grained motions, with spatial-temporal composition to the user instructions. Specifically, FineMoGen builds upon diffusion model with a novel transformer architecture dubbed Spatio-Temporal Mixture Attention (SAMI). SAMI optimizes the generation of the global attention template from two perspectives: 1) explicitly modeling the constraints of spatio-temporal composition; and 2) utilizing sparsely-activated mixture-of-experts to adaptively extract fine-grained features. To facilitate a large-scale study on this new fine-grained motion generation task, we contribute the HuMMan-MoGen dataset, which consists of 2,968 videos and 102,336 fine-grained spatio-temporal descriptions. Extensive experiments validate that FineMoGen exhibits superior motion generation quality over state-of-the-art methods. Notably, FineMoGen further enables zero-shot motion editing capabilities with the aid of modern large language models (LLM), which faithfully manipulates motion sequences with fine-grained instructions. Project Page: https://mingyuan-zhang.github.io/projects/FineMoGen.html

Mingyuan Zhang, Huirong Li, Zhongang Cai, Jiawei Ren, Lei Yang, Ziwei Liu• 2023

Related benchmarks

TaskDatasetResultRank
Text-to-motion generationHumanML3D (test)
FID0.151
331
text-to-motion mappingKIT-ML (test)
R Precision (Top 3)0.772
275
text-to-motion mappingHumanML3D (test)
FID0.151
243
Text-to-motion generationKIT-ML (test)
FID0.178
115
Text-to-motion generationHumanML3D 19 (test)
FID0.151
37
Text-to-motion generationHumanML3D 1 (test)
R-Precision (Top 1)0.504
32
Multi-concept motion generation (single text)MTT (test)
R@15.4
16
Text-to-motion generationKIT-ML 52 (test)
R-Precision Top-10.432
11
Text-to-motion generationMTT
R@15.4
6
Temporal Motion GenerationBABEL (test)
R Precision56
5
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