Bio-Inspired Self-Supervised Learning for Wrist-worn IMU Signals
arXiv cs.LG / 3/12/2026
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Key Points
- The paper introduces a tokenization strategy based on submovement theory, treating wrist motion as sequences of movement segments rather than unstructured time series.
- It pretrains a Transformer encoder with masked movement-segment reconstruction to model temporal dependencies between segments, focusing on higher-level movement structure rather than local waveform morphology.
- Pretraining on the NHANES dataset (about 28k hours, ~11k participants, ~10M windows) yields representations that outperform strong wearable SSL baselines on six subject-disjoint HAR benchmarks and show improved data efficiency in data-scarce settings.
- The work emphasizes leveraging biological structure in movement for HAR and will release code and pretrained weights to the community.
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