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Papers/MoFusion: A Framework for Denoising-Diffusion-based Motion...

MoFusion: A Framework for Denoising-Diffusion-based Motion Synthesis

Rishabh Dabral, Muhammad Hamza Mughal, Vladislav Golyanik, Christian Theobalt

2022-12-08CVPR 2023 1DenoisingMotion Synthesis
PaperPDF

Abstract

Conventional methods for human motion synthesis are either deterministic or struggle with the trade-off between motion diversity and motion quality. In response to these limitations, we introduce MoFusion, i.e., a new denoising-diffusion-based framework for high-quality conditional human motion synthesis that can generate long, temporally plausible, and semantically accurate motions based on a range of conditioning contexts (such as music and text). We also present ways to introduce well-known kinematic losses for motion plausibility within the motion diffusion framework through our scheduled weighting strategy. The learned latent space can be used for several interactive motion editing applications -- like inbetweening, seed conditioning, and text-based editing -- thus, providing crucial abilities for virtual character animation and robotics. Through comprehensive quantitative evaluations and a perceptual user study, we demonstrate the effectiveness of MoFusion compared to the state of the art on established benchmarks in the literature. We urge the reader to watch our supplementary video and visit https://vcai.mpi-inf.mpg.de/projects/MoFusion.

Results

TaskDatasetMetricValueModel
Pose TrackingAIST++Beat alignment score0.253MoFusion
Pose TrackingAIST++FID50.31MoFusion
Motion SynthesisAIST++Beat alignment score0.253MoFusion
Motion SynthesisAIST++FID50.31MoFusion
10-shot image generationAIST++Beat alignment score0.253MoFusion
10-shot image generationAIST++FID50.31MoFusion
3D Human Pose TrackingAIST++Beat alignment score0.253MoFusion
3D Human Pose TrackingAIST++FID50.31MoFusion

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