2024
DOI: 10.3389/fbioe.2024.1350135
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Enhancing biomechanical machine learning with limited data: generating realistic synthetic posture data using generative artificial intelligence

Carlo Dindorf,
Jonas Dully,
Jürgen Konradi
et al.

Abstract: Objective: Biomechanical Machine Learning (ML) models, particularly deep-learning models, demonstrate the best performance when trained using extensive datasets. However, biomechanical data are frequently limited due to diverse challenges. Effective methods for augmenting data in developing ML models, specifically in the human posture domain, are scarce. Therefore, this study explored the feasibility of leveraging generative artificial intelligence (AI) to produce realistic synthetic posture data by utilizing … Show more

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Cited by 2 publications
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