Revolutionizing Road Safety: Deep Learning in Vehicle Detection on Rs Fatmawati Road
DOI:
https://doi.org/10.38035/jim.v3i4.2106Keywords:
Deep learning, Convolutional Neural Network, Vehicle detection, Traffic management, Intelligent Transport Systems, RS Fatmawati Street, Vehicle DetectionAbstract
This study evaluates the YOLOv8 deep learning model for vehicle detection on Jalan RS Fatmawati, Jakarta, using publicly available CCTV footage. Extensive pre-processing and data augmentation enhance model robustness, with performance assessed through metrics like mAP, precision, recall, and F1-score. Results indicate YOLOv8's high accuracy and reliability in real-time vehicle detection across various weather and lighting conditions, offering significant implications for urban planning and traffic management. The research also compares YOLOv8 with previous models (YOLOv4 and YOLOv5), revealing superior performance under specific conditions but challenges in extreme environments. These findings underline the model's practical utility and identify areas for future research.
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Copyright (c) 2025 Muhammad Syafiq Reynara, Oktaria Dwi Yanti, Abdullah Ade Suryobuwono, Prima Widiyanto

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