2024
DOI: 10.3390/s24020681
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Robust Feature Representation Using Multi-Task Learning for Human Activity Recognition

Behrooz Azadi,
Michael Haslgrübler,
Bernhard Anzengruber-Tanase
et al.

Abstract: Learning underlying patterns from sensory data is crucial in the Human Activity Recognition (HAR) task to avoid poor generalization when coping with unseen data. A key solution to such an issue is representation learning, which becomes essential when input signals contain activities with similar patterns or when patterns generated by different subjects for the same activity vary. To address these issues, we seek a solution to increase generalization by learning the underlying factors of each sensor signal. We … Show more

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