Personalized Anomaly Detection in PPG Data using Representation Learning and Biometric Identification
Ramin Ghorbani, Marcel J.T. Reinders, and David M.J. Tax

TL;DR
This paper presents a two-stage framework that uses representation learning and personalization to improve anomaly detection in PPG signals from wearable devices, addressing challenges of variability and limited labeled data.
Contribution
It introduces a novel two-stage approach combining representation learning with personalization for enhanced anomaly detection in PPG data, validated on multiple datasets.
Findings
Representation learning improves detection accuracy.
Personalized models outperform generalized ones.
Biometric identification is more accurate for individual users.
Abstract
Photoplethysmography (PPG) signals, typically acquired from wearable devices, hold significant potential for continuous fitness-health monitoring. In particular, heart conditions that manifest in rare and subtle deviating heart patterns may be interesting. However, robust and reliable anomaly detection within these data remains a challenge due to the scarcity of labeled data and high inter-subject variability. This paper introduces a two-stage framework leveraging representation learning and personalization to improve anomaly detection performance in PPG data. The proposed framework first employs representation learning to transform the original PPG signals into a more discriminative and compact representation. We then apply three different unsupervised anomaly detection methods for movement detection and biometric identification. We validate our approach using two different datasets in…
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Taxonomy
TopicsNon-Invasive Vital Sign Monitoring · Anomaly Detection Techniques and Applications · Context-Aware Activity Recognition Systems
