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Streamlining Attendance with Voice Recognition via Gaussian Mixture Model

Noor Rasidah Ali, Khadija Ali, Fatimah Ali, Aaminah Ali, Nisar Ali, Raja Hashim Ali

202418 citationsDOI

Abstract

Voice recognition systems are crucial because they allow seamless human-computer interaction and improve accessibility for users of all abilities. The use of these technologies in hands-free control, language translation, virtual assistants, transcription services, and hands-free control is revolutionising how we engage with technology and enhancing convenience and productivity in general. Several attendance systems based on voice recognition exist, but we wanted to deploy an attendance system with a good graphical user interface specifically for students of GIK Institute. For this purpose, we wanted to make a user-friendly and accurate voice recognition system based and trained on self-provided data of ten students. This study introduces an AI-driven attendance system, which demonstrates high efficiency and accuracy in identifying students’ daily class attendance. To achieve this, the Gaussian Mixture Model approach was employed. The paper also delves into the utilization of libraries and methods, encompassing the training and validation of well-known machine learning models. Additionally, the system’s performance, its strengths, weaknesses and potential areas for improvement are also discussed in the study.

Topics & Concepts

Computer scienceSpeech recognitionMixture modelGaussianAttendanceGaussian processArtificial intelligencePattern recognition (psychology)PhysicsEconomic growthEconomicsQuantum mechanicsSpeech Recognition and SynthesisSpeech and Audio Processing