In large organizations, the
time and effort spent verifying whether or not employees have met their
attendance quotas may become a substantial burden. In order to solve
this issue, a presence mechanism that is both automated and efficient is
being built. However, this technique relies heavily on verification.
Smart Presence System deployments often make use of real-time facial
recognition and identification technologies. In this investigation, we
use two different kinds of algorithms. It uses the Convolutional Neural
Network (CNN) technique as well as the Haar Cascade Classifier. The Haar
Cascade Classifier technique was used during development of this
function. We used the CNN algorithm to compare the results. When a
user's face is detected, the system will generate a new spreadsheet for
each day of the week. This real-time face recognition and identification
technology is restricted to authorized corporate personnel only. Those
who have not yet registered may have their information confirmed using a
QR code verification mechanism. This system might make use of selected
pieces of the user's data. Users with and without accounts may cohabit
without incident within the parameters of this system. We got 99%
accuracy after using the Haar Cascade Classifier.