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Design and implementation of a staff attendance system using fingerprint biometric

 

Table Of Contents


Chapter ONE

1.1 Introduction
1.2 Background of the Study
1.3 Problem Statement
1.4 Objective of the Study
1.5 Limitation of the Study
1.6 Scope of the Study
1.7 Significance of the Study
1.8 Structure of the Research
1.9 Definition of Terms

Chapter TWO

2.1 Overview of Fingerprint Biometric Technology
2.2 Evolution of Biometric Systems
2.3 Applications of Fingerprint Biometrics
2.4 Advantages and Challenges of Fingerprint Biometrics
2.5 Fingerprint Biometric Security Considerations
2.6 Implementation of Fingerprint Biometric Systems
2.7 Case Studies on Fingerprint Biometric Implementations
2.8 Future Trends in Fingerprint Biometric Technology
2.9 Comparison with Other Biometric Technologies
2.10 Ethical and Legal Issues in Fingerprint Biometrics

Chapter THREE

3.1 Research Design and Methodology
3.2 Data Collection Methods
3.3 Sampling Techniques
3.4 Research Instruments
3.5 Data Analysis Procedures
3.6 Ethical Considerations
3.7 Validity and Reliability
3.8 Limitations of the Research Methodology

Chapter FOUR

4.1 Analysis of Fingerprint Biometric System Implementation
4.2 Evaluation of System Performance
4.3 User Experience and Satisfaction
4.4 Security and Privacy Considerations
4.5 Comparison with Traditional Attendance Systems
4.6 Impact on Staff Attendance and Productivity
4.7 Recommendations for System Improvement
4.8 Implications for Future Research

Chapter FIVE

5.1 Summary of Findings
5.2 Conclusion
5.3 Contributions to Knowledge
5.4 Practical Implications
5.5 Recommendations for Practice
5.6 Areas for Future Research

Project Abstract

Abstract
Fingerprint biometric technology has gained significant attention in various applications, including attendance systems. This research project focuses on the design and implementation of a staff attendance system using fingerprint biometric technology. The system is aimed at improving accuracy, efficiency, and security in monitoring employee attendance. The proposed system utilizes fingerprint recognition to uniquely identify each staff member, eliminating the need for traditional methods like manual attendance registers or swipe cards. By capturing and storing fingerprint data for each employee, the system ensures a secure and reliable method of attendance tracking. The implementation of the system involves several key components, including fingerprint scanners, a database for storing and managing employee information, and a user interface for system interaction. The fingerprint scanner captures the unique fingerprint patterns of individuals during enrollment and attendance marking. The captured data is then compared with the stored templates in the database for identification and verification. The system's user interface allows administrators to enroll new employees, manage existing records, and generate attendance reports. Employees can easily mark their attendance by scanning their fingerprints at designated terminals, reducing the chances of buddy punching or fraudulent attendance practices. The design and implementation of the staff attendance system using fingerprint biometric technology offer several advantages over traditional attendance systems. The biometric authentication ensures that only authorized individuals can mark their attendance, enhancing security and preventing attendance fraud. The system also eliminates the need for manual data entry, reducing errors and saving time for both employees and administrators. By leveraging fingerprint biometrics, the staff attendance system provides a convenient and reliable solution for tracking employee attendance. The system's accuracy and efficiency contribute to improved productivity and streamlined attendance management processes in organizations. Overall, the implementation of a fingerprint-based attendance system offers a practical and effective approach to modernizing attendance tracking methods in the workplace.

Project Overview

  INTRODUCTION

1.1        Background to the Study

            Punctuality as Thomas Chandler Haliburton(1796 – 1865) said, is the soul of business. Any institution will require its staff to be punctual for it to be a success. Punctuality as a function of time with respect to date is a very essential requirement in every setup, be it small scale or large organization/institution, of which Federal University of Technology, Minna is no exception (Shoewu and Idowu, 2012).

            The level of impersonation as well as the ghost worker syndrome in recent times is enormous, in both the private and the public sector, Akinduyite, Adetunmbi, Olabode, and Ibidunmoye (2013). Therefore, there is need for a new system which will wipe out all this enumerated issues. The human body has the privilege of having features that are unique and exclusive to each individual. This exclusiveness and unique characteristic has led to the field of biometrics and its application in ensuring security in various fields. Biometrics has gained popularity and has proved itself to be a reliable mode of ensuring privacy, maintaining security and identifying individuals. Today, the technology is being spotlighted as the authentication method because of the need for reliable security (Arulogun et al, 2013).

            A system insusceptible to impersonation, that provide dependable and efficient means of taking staff attendance record with the use biometrics captures to provide perpetrators with the uniqueness of biometrics will help organization/institution keep good and accurate record of their staff punctuality.

1.2        Motivation of Study

            Punctuality is one of the most important attribute of a good professional, this project is motivated by the desire to bring and enhance professionalism in organizations and institutions.

1.3        Statementof Problem

            Traditionally, staff attendance is done by signing in and out in a register which leavesgap for impersonation and staff sometimes record earlier time when they are late.

1.4   Aim and Objectives of Study

This project is aimed at developing a staff attendance system using fingerprint biometrics.

The objective of these project are to:

1.     Designa staff attendance system using fingerprint biometric.

2.     Implement of the designed system.

3.     Test the implemented Staff attendance system

Scope and Limitation of Study

This project usesfingerprint biometric for time attendance of Federal University of Technology, Minna to makes the task less burdensome and enhance professionalism in organizations.

This project is limited to the fact that the proposed system doesn’t have a centralized database, which means staff enrollment will have to be done at their work unit. Furthermore, transferred staff details will be copied to the new unit database or re-enroll at new station before the staff can have access to the system.

1.6       Significance of Study

            The use of staff attendance system is very important because of human being proneness to error, leaving the staff to write down their names might not be accurate as staff can even write attendance for their fellow staff and their handwriting legibility can be a case when compiling the attendance record at the end of the month.

            The official in charge of attendance collation is highly favored by this system because use of pen and paper as a means of collating staff attendancewill leave the official in charge with numerous sheet of paper, which will be hectic as he/she have to start comparing several sheet to record the average attendance for just a staff. The official is going to waste a lot of time compiling the attendance percentage at the end of the month, mistake can creep in due to the large volumes of papers

            Successful implementation of this project mean the staff attendance credibility can be queried or put to test anytime,  and result are produce fast and accuracy, without stress


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