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CLASSROOM ATTENDANCE SYSTEM WITH FACIAL DETECTION USING AURDINO

Kavyashree Patil, Chandrasekhara Seregara

Abstract


This project presents a Facial Detection Attendance System using Arduino, where an external camera module captures the face, processes it through a computer-vision algorithm, and communicates the attendance status to an Arduino microcontroller. The Arduino handles local functions such as real-time clock (RTC) time-stamping, display output, and optional hardware components (Servo, buzzer, LED indicators). The proposed system aims to offer a cost-effective, portable, and efficient attendance system suitable for schools, small industries, and office spaces. The experimental results demonstrate improved accuracy, reduced attendance time, and strong resistance to spoofing attempts.

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References


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