You can monitor your hydration level using your smartphone camera
Rose Alaslani, Levina Perzhilla, Muhammad Mahboob Ur Rahman,, Taous-Meriem Laleg-Kirati, Tareq Y. Al-Naffouri

TL;DR
This paper introduces a novel, non-invasive smartphone-based method for self-monitoring hydration levels using video-recorded PPG signals, achieving high accuracy in classifying hydration status.
Contribution
It presents a new approach utilizing smartphone cameras to extract PPG signals for hydration monitoring, with high accuracy and explainability, and constructs a custom dataset for this purpose.
Findings
High classification accuracy of 95-99% for hydration levels.
Effective use of deep learning and transformer models for PPG data analysis.
Explainability of model decisions using SHAP framework.
Abstract
This work proposes for the first time to utilize the regular smartphone -- a popular assistive gadget -- to design a novel, non-invasive method for self-monitoring of one's hydration level on a scale of 1 to 4. The proposed method involves recording a small video of a fingertip using the smartphone camera. Subsequently, a photoplethysmography (PPG) signal is extracted from the video data, capturing the fluctuations in peripheral blood volume as a reflection of a person's hydration level changes over time. To train and evaluate the artificial intelligence models, a custom multi-session labeled dataset was constructed by collecting video-PPG data from 25 fasting subjects during the month of Ramadan in 2023. With this, we solve two distinct problems: 1) binary classification (whether a person is hydrated or not), 2) four-class classification (whether a person is fully hydrated, mildly…
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Taxonomy
TopicsIntravenous Infusion Technology and Safety · Mobile Health and mHealth Applications · Non-Invasive Vital Sign Monitoring
MethodsFeature Selection
