Authors
Beren Semiz, M Emre Gursoy, Md Mobashir Hasan Shandhi, Lara Orlandic, Vincent J Mooney, Omer T Inan
Publication date
2021/11/13
Book
International Conference on Wireless Mobile Communication and Healthcare
Pages
281-292
Publisher
Springer International Publishing
Description
Many electronic devices such as weighing scales, fitness equipment and medical devices are nowadays shared by multiple users. In such devices, automatic identification of device users becomes an important step towards improved user convenience and personalized service. In this paper, we propose a novel approach for subject identification using ballistocardiogram (BCG) signals collected unobtrusively from a modified weighing scale. Our approach first segments BCG signals into heartbeats using signal filtering and beat detection techniques, and averages beats to obtain smoother ensemble averaged BCG frames that are more robust to noise. Second, it extracts features related to subjects’ cardiovascular performance and musculoskeletal system from their BCG frames. Finally, it trains a machine learning model for predicting the owner of an unlabeled BCG recording based on its features. We evaluated our …
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Scholar articles
B Semiz, ME Gursoy, MMH Shandhi, L Orlandic… - … Conference on Wireless Mobile Communication and …, 2021