• Login
    View Item 
    •   MMUST Institutional Repository
    • Theses and Dissertations
    • PhD Theses/ Dissertations
    • School of Computing and Informatics
    • View Item
    •   MMUST Institutional Repository
    • Theses and Dissertations
    • PhD Theses/ Dissertations
    • School of Computing and Informatics
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    MACHINE LEARNING MODEL FOR TRAFFIC SIGN RECOGNITION

    Thumbnail
    View/Open
    MACHINE LEARNING MODEL FOR TRAFFIC SIGN RECOGNITION.pdf (4.266Mb)
    Date
    2025-10
    Author
    Prestone, Jeremiah Simiyu
    Metadata
    Show full item record
    Abstract
    Autonomous (driverless) cars are increasingly becoming popular, hence calling for robust Traffic Sign Recognition (TSR) systems to ensure road safety. A report by World Health Organization Road Safety Report of 2018, shows that failure to distinguish and recognize traffic signs is among the leading causes of accidents. Existing TSR systems are adversely affected by environmental conditions, partial occlusion of traffic sign, illumination, colour deterioration because of their exposure to different rays including Ultra-Violet (UV), physical deformation, variations in pictogram designs and weather conditions among others. The study was guided by the following main objective; to develop a robust model using machine learning for recognition of traffic signs. Deductive research approaches, was used to achieve the following specific objectives: to analyses existing techniques in TSR, to design an advanced feature extraction technique for robust TSR and develop a machine learning model for recognition of traffic signs. The new Local Directional Histogram of Oriented Gradient (LD-HOG) feature extractor is the main contribution of this work. A more resilient and discriminative descriptor is produced by combining the directional resilience and noise invariance of the Local Directional Pattern (LDP) with the potent gradient magnitude representation of HOG. The German Traffic Sign Detection Benchmark (GTSRB) dataset, was used to extract features. With an average F1-score of 96.5% using an SVM classifier, LD-HOG outperformed HOG by 4.2% and LDP by 7.8%. By helping to create more accurate and dependable advanced driver-assistance systems, the study will benefit a variety of stakeholders and road users, including drivers, passengers, and legislators., and policy makers.
    URI
    https://ir-library.mmust.ac.ke/xmlui/handle/123456789/3501
    Collections
    • School of Computing and Informatics [14]

    MMUST Library copyright © 2011-2022  MMUST Open Access Policy
    Contact Us | Send Feedback
     

     

    Browse

    All of Institutional RepositoryCommunities & CollectionsBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

    My Account

    LoginRegister

    MMUST Library copyright © 2011-2022  MMUST Open Access Policy
    Contact Us | Send Feedback