Pengembangan Platform Pembelajaran Daring “KakTutor” Berbasis Kecerdasan Buatan dalam Menganalisis Emosi Siswa

Edmund Tyan Tanjaya, Ferdiansyah Sarkozy, Immanuel Christian Haryanto, Joseph Mitchel Lienandi, Vin Cen, Rahmi Yulia Ningsih, Chairani Putri Pratiwi

Abstract


This study aims to develop an AI-based online learning system capable of detecting and analyzing students’ facial expressions in real time to help instructors better understand their emotions and levels of understanding. The research method employed is Research and Development (R&D) using a Prototype model, consisting of the stages of planning, prototype creation, user evaluation, refinement, and system finalization. The system was developed using the Face API and Google Gemini API with the Facial Action Coding System (FACS) approach to detect facial expressions. Expert testing results show a high level of system accuracy and effectiveness, with an average score of 4.44 (classified as very good). The system is considered effective in assisting instructors in recognizing students’ emotions and adapting teaching strategies accordingly. Therefore, the application of artificial intelligence in online learning has the potential to create a more interactive, empathetic, and effective learning environment.

Keywords


artificial intelligence, online learning, facial expression, real-time system, learning platform.

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References


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DOI: http://dx.doi.org/10.33087/jiubj.v26i1.6386

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