CVGRRONov 25, 2024

MotionWavelet: Human Motion Prediction via Wavelet Manifold Learning

Tsinghua
arXiv:2411.16964v28 citationsh-index: 18Has Code
Originality Highly original
AI Analysis

This addresses human motion prediction for applications like robotics or animation, presenting a novel method for a known bottleneck in modeling complex temporal characteristics.

The paper tackles the problem of predicting human future motions by capturing non-stationary dynamics and subtle transitions, introducing MotionWavelet with a Wavelet Diffusion Model and guidance mechanisms that improve prediction accuracy and generalization across benchmarks.

Modeling temporal characteristics and the non-stationary dynamics of body movement plays a significant role in predicting human future motions. However, it is challenging to capture these features due to the subtle transitions involved in the complex human motions. This paper introduces MotionWavelet, a human motion prediction framework that utilizes Wavelet Transformation and studies human motion patterns in the spatial-frequency domain. In MotionWavelet, a Wavelet Diffusion Model (WDM) learns a Wavelet Manifold by applying Wavelet Transformation on the motion data therefore encoding the intricate spatial and temporal motion patterns. Once the Wavelet Manifold is built, WDM trains a diffusion model to generate human motions from Wavelet latent vectors. In addition to the WDM, MotionWavelet also presents a Wavelet Space Shaping Guidance mechanism to refine the denoising process to improve conformity with the manifold structure. WDM also develops Temporal Attention-Based Guidance to enhance prediction accuracy. Extensive experiments validate the effectiveness of MotionWavelet, demonstrating improved prediction accuracy and enhanced generalization across various benchmarks. Our code and models will be released upon acceptance.

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