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Journal
/
Engineering
/
Enhancing Classroom Engagement: AI-Based Analysis of Student Attention Levels
/
Hardware, Software, and Class Setup to Detect Attention Levels in Students
JoVE Journal
Engineering
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JoVE Journal
Engineering
Hardware, Software, and Class Setup to Detect Attention Levels in Students
Hardware, Software, and Class Setup to Detect Attention Levels in Students
Enhancing Classroom Engagement: AI-Based Analysis of Student Attention Levels
DOI:
10.3791/201552-v
•
01:46 min
•
December 15, 2023
•
Luis Marquez-Carpintero
,
Monica Pina-Navarro
,
Sergio Suescun-Ferrandiz
,
Felix Escalona
,
Francisco Gomez-Donoso
,
Rosabel Roig-Vila
,
Miguel Cazorla
1
University Institute for Computer Research
,
University of Alicante
,
2
Department of General and Specific Didactics
,
University of Alicante
Tags
Hardware
Software
Class Setup
Attention Detection
Students
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Camera
Embedded Device
Router
Wi-Fi
Data Capture
Data Collection
Server
Zenithal Camera
Accelerometer
Gyroscope
Heart Rate
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