Improving Sparse IMU-based Motion Capture with Motion Label Smoothing
Zhaorui Meng, Lu Yin, Yangqing Hou, Anjun Chen, Shihui Guo, Yipeng Qin

TL;DR
This paper introduces a novel motion label smoothing technique using skeleton-based Perlin noise to improve sparse IMU-based human motion capture, enhancing regularization and model robustness.
Contribution
It proposes a new label smoothing method tailored for IMU motion capture, addressing limitations of naive approaches and preserving motion properties.
Findings
Enhanced motion capture accuracy across datasets
Improved model robustness and generalization
Effective plug-and-play regularization method
Abstract
Sparse Inertial Measurement Units (IMUs) based human motion capture has gained significant momentum, driven by the adaptation of fundamental AI tools such as recurrent neural networks (RNNs) and transformers that are tailored for temporal and spatial modeling. Despite these achievements, current research predominantly focuses on pipeline and architectural designs, with comparatively little attention given to regularization methods, highlighting a critical gap in developing a comprehensive AI toolkit for this task. To bridge this gap, we propose motion label smoothing, a novel method that adapts the classic label smoothing strategy from classification to the sparse IMU-based motion capture task. Specifically, we first demonstrate that a naive adaptation of label smoothing, including simply blending a uniform vector or a ``uniform'' motion representation (e.g., dataset-average motion or a…
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Taxonomy
TopicsHuman Motion and Animation · 3D Shape Modeling and Analysis · Human Pose and Action Recognition
