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HumanTOMATO: Text-aligned Whole-body Motion Generation

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arxiv 2310.12978 v1 pith:L7JA2TCT submitted 2023-10-19 cs.CV

HumanTOMATO: Text-aligned Whole-body Motion Generation

classification cs.CV
keywords motiongenerationwhole-bodyhandalignmentbodydescriptionfine-grained
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This work targets a novel text-driven whole-body motion generation task, which takes a given textual description as input and aims at generating high-quality, diverse, and coherent facial expressions, hand gestures, and body motions simultaneously. Previous works on text-driven motion generation tasks mainly have two limitations: they ignore the key role of fine-grained hand and face controlling in vivid whole-body motion generation, and lack a good alignment between text and motion. To address such limitations, we propose a Text-aligned whOle-body Motion generATiOn framework, named HumanTOMATO, which is the first attempt to our knowledge towards applicable holistic motion generation in this research area. To tackle this challenging task, our solution includes two key designs: (1) a Holistic Hierarchical VQ-VAE (aka H$^2$VQ) and a Hierarchical-GPT for fine-grained body and hand motion reconstruction and generation with two structured codebooks; and (2) a pre-trained text-motion-alignment model to help generated motion align with the input textual description explicitly. Comprehensive experiments verify that our model has significant advantages in both the quality of generated motions and their alignment with text.

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Forward citations

Cited by 4 Pith papers

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    A text-conditioned diffusion model using dynamic object-centric BPS, mixed-domain training, and contact augmentation produces generalizable full-body locomotion-to-articulated-object interaction sequences that beat ad...

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    Grounded SAM integrates Grounding DINO and SAM to support text-prompted open-world detection and segmentation, achieving 48.7 mean AP on SegInW zero-shot with the base detector and huge segmenter.

  3. SASI: Leveraging Sub-Action Semantics for Robust Early Action Recognition in Human-Robot Interaction

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  4. EgoMotion: Hierarchical Reasoning and Diffusion for Egocentric Vision-Language Motion Generation

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    EgoMotion decouples reasoning from motion synthesis in egocentric vision-language tasks by mapping inputs to motion primitives via VLM then using diffusion to produce grounded and coherent 3D trajectories.