Helping Blind Individuals: Pakistani Currency Recognition System for Blind People Using the YOLOv8 Model

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Politechnica University of Bucharest

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info:eu-repo/semantics/closedAccess

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Blind or visually impaired individuals face significant challenges in recognizing currency notes, especially in regions where cash transactions remain common. To address this issue, we propose a real-time currency detection system tailored for Pakistani currency notes. The system is powered by the YOLOv8 object detection model, which achieved 99.1% accuracy with an average inference time of 12 milliseconds per image, ensuring both precision and speed. Once the denomination is identified, it is communicated to the user via text-to-speech for audible feedback. The application is structured with a Streamlit-based front-end for user interaction and a Flask-based back-end API, deployed via NGROK to ensure secure, accessible cloud usage. This architecture allows real-time operation across devices without local installations. In addition to implementation, we conducted a comparative evaluation of YOLOv8 against VGG19 (val-accuracy 83%), highlighting YOLOv8's superior performance in terms of accuracy and inference speed across varied lighting and orientation conditions. The results reinforce YOLOv8's suitability for assistive technologies and provide a benchmark for future improvements in AI-powered accessibility tools.

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Anahtar Kelimeler

Blind People, Computer Vision, Deep Learning, Image classification, Machine Learning, Pakistani Currency notes, VGG19, YOLOv8

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UPB Scientific Bulletin, Series C: Electrical Engineering and Computer Science

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Cilt

87

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4

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Mushtaq, A., Khan, H. W., Salman, M., Abid, F., Rasheed, J., & Alsubai, S. (2025). HELPING BLIND INDIVIDUALS: PAKISTANI CURRENCY RECOGNITION SYSTEM FOR BLIND PEOPLE USING THE YOLOv8 MODEL. UPB Scientific Bulletin, Series C: Electrical Engineering and Computer Science, 87(4), 139-156.

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