Wearable Multisensor Ring-Shaped Probe for Assessing Stress and Blood Oxygenation: Design and Preliminary Measurements
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L. Faes | R. Pernice | A. Parisi | A. Busacca | Jinseok Lee | G. Volpes | Simone Valenti | Daniele Peri
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