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Employing automatic content recognition for teaching methodology analysis in classroom videos

Muhammad Aasim Rafique, Faheem Khaskheli, Malik Tahir Hassan, Sheraz Naseer, Moongu Jeon

2022PLoS ONE13 citationsDOIOpen Access PDF

Abstract

A teacher plays a pivotal role in grooming a society and paves way for its social and economic developments. Teaching is a dynamic role and demands continuous adaptation. A teacher adopts teaching techniques suitable for a certain discipline and a situation. A thorough, detailed, and impartial observation of a teacher is a desideratum for adaptation of an effective teaching methodology and it is a laborious exercise. An automatic strategy for analyzing a teacher's teaching methodology in a classroom environment is suggested in this work. The proposed strategy recognizes a teacher's actions in videos while he is delivering lectures. In this study, 3D CNN and Conv2DLSTM with time-distributed layers are used for experimentation. A range of actions are recognized for a complete classroom session during experimentation and the reported results are considered effective for analysis of a teacher's teaching technique.

Topics & Concepts

Adaptation (eye)Session (web analytics)Computer scienceTeaching methodWork (physics)MultimediaMathematics educationHuman–computer interactionPsychologyWorld Wide WebNeuroscienceMechanical engineeringEngineeringHuman Pose and Action RecognitionVideo Analysis and SummarizationAdvanced Vision and Imaging
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