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Main Authors: Niculescu, Andreea I., Ehnes, Jochen, Yi, Chen, Jiawei, Du, Pin, Tay Chiat, Zhou, Joey Tianyi, Subbaraju, Vigneshwaran, Kuan, Teh Kah, Dat, Tran Huy, Komar, John, Chee, Gi Soong, Kwok, Kenneth
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.11143
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author Niculescu, Andreea I.
Ehnes, Jochen
Yi, Chen
Jiawei, Du
Pin, Tay Chiat
Zhou, Joey Tianyi
Subbaraju, Vigneshwaran
Kuan, Teh Kah
Dat, Tran Huy
Komar, John
Chee, Gi Soong
Kwok, Kenneth
author_facet Niculescu, Andreea I.
Ehnes, Jochen
Yi, Chen
Jiawei, Du
Pin, Tay Chiat
Zhou, Joey Tianyi
Subbaraju, Vigneshwaran
Kuan, Teh Kah
Dat, Tran Huy
Komar, John
Chee, Gi Soong
Kwok, Kenneth
contents This paper presents a two-year research project focused on developing AI-driven measures to analyze classroom dynamics, with particular emphasis on teacher actions captured through multimodal sensor data. We applied real-time data from classroom sensors and AI techniques to extract meaningful insights and support teacher development. Key outcomes include a curated audio-visual dataset, novel behavioral measures, and a proof-of-concept teaching review dashboard. An initial evaluation with eight researchers from the National Institute for Education (NIE) highlighted the system's clarity, usability, and its non-judgmental, automated analysis approach -- which reduces manual workloads and encourages constructive reflection. Although the current version does not assign performance ratings, it provides an objective snapshot of in-class interactions, helping teachers recognize and improve their instructional strategies. Designed and tested in an Asian educational context, this work also contributes a culturally grounded methodology to the growing field of AI-based educational analytics.
format Preprint
id arxiv_https___arxiv_org_abs_2506_11143
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On the development of an AI performance and behavioural measures for teaching and classroom management
Niculescu, Andreea I.
Ehnes, Jochen
Yi, Chen
Jiawei, Du
Pin, Tay Chiat
Zhou, Joey Tianyi
Subbaraju, Vigneshwaran
Kuan, Teh Kah
Dat, Tran Huy
Komar, John
Chee, Gi Soong
Kwok, Kenneth
Computer Vision and Pattern Recognition
H.5; J.4; I.2.7; I.2.10
This paper presents a two-year research project focused on developing AI-driven measures to analyze classroom dynamics, with particular emphasis on teacher actions captured through multimodal sensor data. We applied real-time data from classroom sensors and AI techniques to extract meaningful insights and support teacher development. Key outcomes include a curated audio-visual dataset, novel behavioral measures, and a proof-of-concept teaching review dashboard. An initial evaluation with eight researchers from the National Institute for Education (NIE) highlighted the system's clarity, usability, and its non-judgmental, automated analysis approach -- which reduces manual workloads and encourages constructive reflection. Although the current version does not assign performance ratings, it provides an objective snapshot of in-class interactions, helping teachers recognize and improve their instructional strategies. Designed and tested in an Asian educational context, this work also contributes a culturally grounded methodology to the growing field of AI-based educational analytics.
title On the development of an AI performance and behavioural measures for teaching and classroom management
topic Computer Vision and Pattern Recognition
H.5; J.4; I.2.7; I.2.10
url https://arxiv.org/abs/2506.11143