3.8 Proceedings Paper

Preliminary Design of an AI Service to Assist Self-regulated Learning by Edge Computing

出版社

SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-031-11647-6_119

关键词

regulated learning; Edge computing; Online learning; E-learning; Artificial Intelligence (AI); Eye Tracking

资金

  1. Ministry of Science and Technology of Taiwan (R.O.C.) [109-2410-H-003-123-MY3]

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This study implemented a highly accessible AI service that collected facial data through edge computing to assist self-regulated learning with privacy protection. Students can review their online learning process and improve learning efficiency by playing back facial data.
When sitting in front of a computer screen for online learning, students can be easily distracted by other sources on the Internet. To help students improve their online learning experience, we implemented a highly accessible AI service, which collected facial data from the web camera to assist self-regulated learning for students with privacy protection by way of edge computing. The service can capture self-learning metrics such as eye gazing points and facial expressions. Then the captured facial streaming data can be played back by the user. All steps are done locally at the users' browser. The learners can reviewtheir online learning process to improve their learning efficiency through an interactive interface. Our preliminary evaluation showed promising feedback from real users.

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