International Journal of Engineering and Modern Technology (IJEMT )
E-ISSN 2504-8848
P-ISSN 2695-2149
VOL. 10 NO. 2 2024
DOI: https://doi.org/10.56201/ijemt.v10.no2.2024.pg107.118
Oparah Camillus C, Amanze Bethran C, Obioha Iwuoha, Oladimeji S.A
Monitoring of traffic offenders in developing countries has a lot of challenges including; lack of proper authentication of vehicles and users, lack of substantive traffic system that suits the management of traffic offenders’ profile in both rural and urban areas, lack of predictable modules to forecast the tendency of an offender to cause accident in the future, poor means of communication between traffic agencies and vehicle users, poor traffic offence awareness for vehicle users and lack of a dependable traffic offenders profile database. Therefore, this thesis is providing a solution by development of a deep learning model for profiling and predicting traffic offenders focuses on developing a traffic offenders profiling and prediction system using deep learning algorithm to predict the likelihood of an offence to be committed by a road user. The proposed system developed a model that will profile traffic offenders in both urban and rural settings, create a traffic offender’s database that will interact with existing national databases to authenticate traffic offenders, provides a module that will predict the likelihood of a road user to commit severe traffic blunder in the future and provide intelligent information necessary for timely action by law enforcement agencies. The system designs was implemented using a web-system developed with PHP, MySQL and JavaScript. The System Design followed the OODM methodology for componentization of the system modules giving room for coupling, decoupling, modification, encapsulation and reuse, as well as easy maintainability. Unified Modeling Language was extensively used to simplify the explanation of the system modules. The software performance was tested using accuracy of traffic offender prediction and Confusion Matrix was
OOADM, Database, deep learning, authentication of vehicles
[1]. Ibe, P. (2012). Racial misuse of “Criminal Profiling” By Law Enforcement: Intention and
Implications. African Journal of Criminology and Justice Studies (AJCJS), 6 (1), 177-196.
[2]. Groeger, J. A. (2016). Youthfulness, inexperience, and sleep loss: the problems young drivers
face and those they pose for us. Injury Prevention, 12 (Supplement 1), 19-24.
[3]. Houck, M. M. & Siegel, B. D. (2006). Fundamental of Foreign Science, Sam Diego, C. A.
Elseview Limited
[4]. Saini, J. et al (2017). Android App Based Vehicle Tracking using GPS and GSM. International
Journal of Scientific & Technology Research, 6 (9), 53-58.