ABSTRACT
The technological evolution and recent advances in machine learning have transformed how ordinary tasks are performed. Due to many technological, cultural and health related changes (such as Covid 19 pandemic), the means for managing attendance has been transformed with Internet of Things (IoT) based technologies. Attendance management system (AMS) is a system that documents and keeps track of employee and student hours and stores them on local repository or in the cloud. Manual approach to recording and keeping track of attendance is prone to human errors and time consuming. Although many studies have proposed new IoT biometric based solutions to enhance this process, achieving accuracy, efficiency and expense affordability can be a challenging task. The most used biometric approach recently is face recognition IoT solutions. Face recognition can be challenging during the Covid 19 pandemic because of face masks. Taking these issues into consideration, we propose a GPS-enabled Iris-based biometric approach for the attendance management system with smartwatches' compatibility feature. The system performs two main tasks: identification and real time localization. The identification is achieved with iris-based identification while localization is using GPS technology and smart watches. The proposed system addresses many fundamental issues such as the expense factors of manufacturing dedicated tracking wearable devices. It also provides an efficient means of identification using iris-based biometric identification which provides many advantages such as accuracy and enhanced friendly experience without relying on face recognition. The proposed IoT Attendance management systems will be designed to provide better automation for managing attendance and reduce many human errors resulting from manual approaches.
- Peixoto, S. A., Vasconcelos, F. F., Guimaraes, M. T., Medeiros, A. G., Rego, P. A., Neto, A. V. L., ... & Reboucas Filho, P. P. (2020). A high-efficiency energy and storage approach for IoT applications of facial recognition. Image and Vision Computing, 96, 103899.Google ScholarCross Ref
- Michael, K., McNamee, A., & Michael, M. G. (2006, June). The emerging ethics of humancentric GPS tracking and monitoring. In 2006 International Conference on Mobile Business (pp. 34-34). IEEE.Google ScholarDigital Library
- Jia, Mengda, "Adopting Internet of Things for the development of smart buildings: A review of enabling technologies and applications." Automation in Construction 101 (2019): 111-126.Google Scholar
- Jeong, J. P., Kim, M., Lee, Y., & Lingga, P. (2020, October). IAAS: IoT-Based Automatic Attendance System with Photo Face Recognition in Smart Campus. In 2020 International Conference on Information and Communication Technology Convergence (ICTC) (pp. 363-366). IEEE. Google Scholar
- Khan, A., Alahmari, A., Almuzaini, Y., Alturki, N., Aburas, A., Alamri, F. A., ... & Jokhdar, H. A. (2021). The Role of Digital Technology in Responding to COVID-19 Pandemic: Saudi Arabia's Experience. Risk Management and Healthcare Policy, 14, 3923.Google ScholarCross Ref
- Alzhrani, A., & salem Almalki, A. (2021). Data Science Applications in Pandemic: A survey on COVID-19 Outbreak Tools. Google Scholar
- Ahmed, N. J. (2021). Current Practice of Using Technology in Health-care Delivery in Saudi Arabia: Challenges and Solutions. Asian Journal of Pharmaceutics (AJP): Free full text articles from Asian J Pharm, 15(1). Google Scholar
- Vhaduri, S., & Poellabauer, C. (2018). Biometric-based wearable user authentication during sedentary and non-sedentary periods. arXiv preprint arXiv:1811.07060. Google Scholar
- Schüll, N. D. (2016). Data for life: Wearable technology and the design of self-care. BioSocieties, 11(3), 317-333. Google ScholarCross Ref
- Yang, Wencheng, "Biometrics for Internet-of-Things Security: A Review." Sensors 21.18 (2021): 6163.Google Scholar
- Shoewu, O., & Idowu, O. A. (2012). Development of attendance management system using biometrics. The Pacific Journal of Science and Technology, 13(1), 300-307. Google Scholar
- Nuhi, A., Memeti, A., Imeri, F., & Cico, B. (2020, June). Smart attendance system using qr code. In 2020 9th Mediterranean Conference on Embedded Computing (MECO) (pp. 1-4). IEEE. Google ScholarCross Ref
- Kariapper, R. K. A. R. (2021). Attendance System Using RFID, IOT and Machine Learning: A Two-Factor Verification Approach. Systematic Reviews in Pharmacy, 12(3), 314-321. Google Scholar
- Alhussain, T., & Drew, S. (2009, September). Towards user acceptance of biometric technology in E-Government: A survey study in the Kingdom of Saudi Arabia. In Conference on e-Business, e-Services and e-Society (pp. 26-38). Springer, Berlin, Heidelberg.Google Scholar
- Cerna, P., Charlemaine, M., & Mengstie, M. Machine Learning Biometric Attendance System using Fingerprint Fuzzy Vault Scheme Algorithm and Multi-Task Convolution Neural Network Face Recognition Algorithm. International Journal of Computer Applications, 975, 8887.Google Scholar
- Chandramohan, J., Nagarajan, R., Dineshkumar, T., Kannan, G., & Prakash, R. (2017). Attendance monitoring system of students based on biometric and gps tracking system. International Journal of Advanced engineering, Management and Science, 3(3), 239799.Google Scholar
- Madhu, B. S., & Kanagotagi, K. (2017, September). IoT based Automatic Attendance Management System. In 2017 International Conference on Current Trends in Computer, Electrical, Electronics and Communication (CTCEEC) (pp. 83-86). IEEE.Google ScholarCross Ref
- Serrano, A. S. N., Turaya, L. A., Legaspi, C. E. M., Daigdigan, E. P., & Agustin, L. F. (2018). ATTENDANCE MANAGEMENT SYSTEM IMPLEMENTING INTERNET OVER THINGS (IoT) FOR DOOR OF FAITH CHRISTIAN CHURCH. International Journal of Advanced Research in Computer Science, 10(6).Google ScholarCross Ref
- Shukla, A. K. (2017). Microcontroller Based Attendance System Using RFID and GSM. International Journal of Emerging Technologies in Engineering Research (IJETER), 5(8).Google Scholar
- Ahmadi, H., Arji, G., Shahmoradi, L., Safdari, R., Nilashi, M., & Alizadeh, M. (2019). The application of internet of things in healthcare: a systematic literature review and classification. Universal Access in the Information Society, 18(4), 837-869.Google ScholarCross Ref
- Unal, C., & Tecim, V. (2018). The use of biometric technology for effective personnel management system in organization. KnE Social Sciences, 221-232. Google Scholar
- Zhao, Z., & Kumar, A. (2017). Towards more accurate iris recognition using deeply learned spatially corresponding features. In Proceedings of the IEEE international conference on computer vision (pp. 3809-3818).Google ScholarCross Ref
- Bamufleh, D., Alshamari, A. S., Alsobhi, A. S., Ezzi, H. H., & Alruhaili, W. S. (2021). Exploring Public Attitudes toward E-Government Health Applications Used During the COVID-19 Pandemic: Evidence from Saudi Arabia. Computer and Information Science, 14(3).Google Scholar
- Madakam, S., Lake, V., Lake, V., & Lake, V. (2015). Internet of Things (IoT): A literature review. Journal of Computer and Communications, 3(05), 164.Google ScholarCross Ref
- Sharma, T., & Aarthy, S. L. (2016, November). An automatic attendance monitoring system using RFID and IOT using Cloud. In 2016 Online International Conference on Green Engineering and Technologies (IC-GET) (pp. 1-4). IEEE.Google ScholarCross Ref
Index Terms
- IoT based Attendance Management System (AMS) with Smartwatches' Compatibility
Recommendations
Metacarpophalangeal joint patterns based personal identification system
A new biometric identifier: whole MJP pattern is introduced.An effective, fast and robust MJP based biometric system is developed and presented.Discriminative common vector based method is firstly applied to obtain the feature sets of MJPs. This paper ...
Palmprint and Finger-Knuckle-Print for efficient person recognition based on Log-Gabor filter response
Person recognition systems based on biometrics are being increasingly utilized in any applications to enhance the security of physical and logical access systems. A number of biometric traits exist and are in use in various applications. Each biometric ...
A novel biometric system based on palm vein image
Vein pattern recognition is one of the newest biometric techniques researched today. In this paper, one of the reliable and robust personal identification authentication approaches using palm vein patterns is presented. We consider the palm vein as a ...
Comments