Unsupervised anomaly detection on multi-modal foot sensor data from healthy subjects creates a statistical baseline for future diabetic foot ulcer risk monitoring.
Towards the in- ternet of smart clothing: A review on iot wearables and garments for creating intelligent connected e-textiles.Electronics, 7(12):405, 2018
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Unsupervised Anomaly Detection in Wearable Foot Sensor Data: A Baseline Feasibility Study Towards Diabetic Foot Ulcer Prevention
Unsupervised anomaly detection on multi-modal foot sensor data from healthy subjects creates a statistical baseline for future diabetic foot ulcer risk monitoring.