Smart Management Attendance System with Facial Recognition Using Computer Vision Techniques on the Raspberry Pi

Abstract

In this study, a smart attendance system was created using computer vision techniques embedded in the Raspberry Pi device. The initial process is carried out by recording students taking certain courses and taking facial images for the needs of the system database. In the next stage, the system will be regulated according to the time of lecture entry to determine which students will attend the lecture. Every student who wants to enter the classroom is identified by taking facial images with a camera from the Raspberry Pi device to identify and determine the time students enter to attend lectures. Each image taken will be processed to detect the presence of a face using the Viola-Jones method and to extract features using the LBP method to obtain the feature value of each image. The results obtained will be stored in the system for the facial recognition process. The final stage of the system being built is to perform face recognition according to the initial image to carry out the attendance process. This process will be carried out using the normalized cross-correlation (NCC) technique, in which the highest feature similarity obtained between the initial image and the newly captured image is the result of recognition by the system. From the trials that have been carried out, the developed system gives good results in obtaining attendance management in a fairly efficient manner, and the algorithm proposed for facial recognition obtains good results with an accuracy rate of 97.54%.

Authors and Affiliations

Fadhillah Azmi, Amir Saleh, and Achmad Ridwan

Keywords

Related Articles

Effect of Acid Treated Recycled Aggregate On Properties of Concrete

The main factors effecting the usage of recycled course aggregate (RCA) in concrete mix was its lack of quality. The surface of the recycled aggregate may contain some cement mortar which affects the quality of recycled...

Advance Fire Control and Detection System

In recent years, the usage of various domestic Internet of Things (IoT) devices has grown increasingly popular. One required and significant use of home automation with IoT is fire detection and fire accident avoidance....

A study of Data Mining Techniques & Challenges

In digital era, such as now, expansion of data in databases is quite quick; everything linked to technology, such as social media, financial technology, & scientific data, all contribute significantly to data growth. Bec...

Stabilization of Black Cotton Soil Using Terrazyme and Rice Hush Ash

Construction on the black cotton soil, a form of troublesome expanding soil, has various difficulties. It has a swollen and impermeable nature with poor sub grade geotechnical properties. This study takes a stab at impro...

A Spatial Analysis of Biogas Potential from Manure in Europe

The utilization of anaerobic processing to create power from biogas is turning out to be more normal all through the globe, with significant monetary and ecological benefits. Biogas, specifically, can help numerous Europ...

Download PDF file
  • EP ID EP745990
  • DOI 10.55524/ijircst.2023.11.1.9
  • Views 36
  • Downloads 0

How To Cite

Fadhillah Azmi, Amir Saleh, and Achmad Ridwan (2023). Smart Management Attendance System with Facial Recognition Using Computer Vision Techniques on the Raspberry Pi. International Journal of Innovative Research in Computer Science and Technology, 11(1), -. https://europub.co.uk/articles/-A-745990