Language Used: Python . Made in Jupyter(Anaconda) notebook.

Overview

FACE-DETECTION-ATTENDENCE-SYSTEM

Made in Jupyter(Anaconda) notebook. Language Used: Python

Steps to perform before running the program :

  1. Install Anaconda.
  2. Install the necessary libraries used:
    • openCV
    • numPy -cmake -dlib
    • face_recognition
  3. Copy the face image in ImagesAttendance to train the model.
  4. Now run the program and the attendence will be marked in Attendance.csv file. Note: Erase the recorded attendence every time from the file Attendance.csv and save it and the only record a new one.
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