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3 months ago

FreeMotion: A Unified Framework for Number-free Text-to-Motion Synthesis

Ke Fan Junshu Tang Weijian Cao Ran Yi Moran Li Jingyu Gong Jiangning Zhang Yabiao Wang Chengjie Wang Lizhuang Ma

FreeMotion: A Unified Framework for Number-free Text-to-Motion Synthesis

Abstract

Text-to-motion synthesis is a crucial task in computer vision. Existing methods are limited in their universality, as they are tailored for single-person or two-person scenarios and can not be applied to generate motions for more individuals. To achieve the number-free motion synthesis, this paper reconsiders motion generation and proposes to unify the single and multi-person motion by the conditional motion distribution. Furthermore, a generation module and an interaction module are designed for our FreeMotion framework to decouple the process of conditional motion generation and finally support the number-free motion synthesis. Besides, based on our framework, the current single-person motion spatial control method could be seamlessly integrated, achieving precise control of multi-person motion. Extensive experiments demonstrate the superior performance of our method and our capability to infer single and multi-human motions simultaneously.

Benchmarks

BenchmarkMethodologyMetrics
motion-synthesis-on-interhumanFreeMotion
FID: 6.740
MMDist: 3.848
MModality: 1.226
R-Precision Top3: 0.544

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FreeMotion: A Unified Framework for Number-free Text-to-Motion Synthesis | Papers | HyperAI