4.8 Article

Artificial intelligence of toilet (AI-Toilet) for an integrated health monitoring system (IHMS) using smart triboelectric pressure sensors and image sensor

期刊

NANO ENERGY
卷 90, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.nanoen.2021.106517

关键词

Smart toilet; Triboelectric; Pressure sensor; Deep learning; AI-toilet

资金

  1. National Key Research and Development Program of China at NUSRI, Suzhou, China [2019YFB2004800, R-2020-S-002]
  2. NAMIC funding of Fast Prototyping of Smart Toilet IoT Sensor System Using 3D Printing, Singapore at NUS, Singapore [R-263-000-E54-592]

向作者/读者索取更多资源

The smart toilet uses a triboelectric pressure sensor array and artificial intelligence technology to provide a more private, cost-effective, and easily deployable health analysis solution. The system accurately identifies users, records sitting time, and analyzes urine through deep learning to help users better understand their health status.
Smart toilet provides a feasible platform for the long-term analysis of person's health. Common solutions for identification are based on camera or radio-frequency identification (RFID) technologies, but it is doubted for privacy issues. Here, we demonstrate an artificial intelligence of toilet (AI-toilet) based on a triboelectric pressure sensor array offering a more private approach with low cost and easily deployable software. The pressure sensor array attached on the toilet seat is composed of 10 textile-based triboelectric sensors, which can leverage the different pressure distribution of individual users' seating manner to get the biometric information. 6 users can be correctly identified with more than 90% accuracy using deep learning. The signals from pressure sensors also can be used for recording the seating time on the toilet. The system integrates a camera sensor to analyze the simulated urine by comparing with urine chart and classify the types and quantities of objects using deep learning. All information including two-factor user identification and entire seating time using pressure sensor array, and data from the urinalysis and stool analysis were automatically transferred to a cloud system and were further shown in user's mobile devices for better tracking their health status.

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