StableMotion: Training Motion Cleanup Models with Unpaired Corrupted Data
Yuxuan Mu, Hung Yu Ling, Yi Shi, Ismael Baira Ojeda, Pengcheng Xi, Chang Shu, Fabio Zinno, Xue Bin Peng

TL;DR
StableMotion introduces a diffusion-based approach that trains motion cleanup models directly from unpaired corrupted mocap data using motion quality indicators, effectively reducing artifacts without requiring clean reference data.
Contribution
The paper presents a novel method for training motion cleanup models from unpaired corrupted data using motion quality indicators and a diffusion framework, eliminating the need for paired datasets.
Findings
Reduces motion pops by 68%
Decreases frozen frames by 81%
Effective on real-world mocap data
Abstract
Motion capture (mocap) data often exhibits visually jarring artifacts due to inaccurate sensors and post-processing. Cleaning this corrupted data can require substantial manual effort from human experts, which can be a costly and time-consuming process. Previous data-driven motion cleanup methods offer the promise of automating this cleanup process, but often require in-domain paired corrupted-to-clean training data. Constructing such paired datasets requires access to high-quality, relatively artifact-free motion clips, which often necessitates laborious manual cleanup. In this work, we present StableMotion, a simple yet effective method for training motion cleanup models directly from unpaired corrupted datasets that need cleanup. The core component of our method is the introduction of motion quality indicators, which can be easily annotated - through manual labeling or heuristic…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Human Pose and Action Recognition · Anomaly Detection Techniques and Applications
