REAL TIME EFFICIENT VEHICLE SPEED MONITORING AND TRAFFIC SURVEILLANCE SYSTEM USING DEEP LEARNING

Authors

  • Mohit Tiwari LNCT University, JKTown Sarvadharam, Sector,C Kolar Road, Bhopal, Madhya Pradesh India 462024 Author
  • Dr. Vikas Sakalle LNCT University, JK Town Sarvadharam, Sector,C Kolar Road, Bhopal, Madhya Pradesh India 462024 Author

DOI:

https://doi.org/10.48047/znnhwa30

Keywords:

Deep learning, YOLOv10, transformer fusion, uncertainty quantification, evidential deep learning, federated learning, edge computing, intelligent transportation systems

Abstract

Real-time vehicle speed monitoring and traffic surveillance are critical for reducing urban accidents, yet existing deep learning systems struggle with low-resolution CCTV, occlusions, and variable frame rates in diverse Indian traffic.
This paper introduces the Uncertainty-Guided Hybrid YOLOv10-Transformer (UGHYT) framework, which fuses optical flow transformers for robust detection/tracking, evidential deep learning for probabilistic speed regression, and federated edge distillation for deployment on resource-constrained CCTV nodes. Evaluated on MITS dataset (94.1% mAP) and custom 50-hour Bhopal CCTV corpus (3.8 km/h RMSE, 35 ms latency), UGHYT outperforms YOLOv8/9 baselines by 35% in speed accuracy under 70% occlusion and 480p conditions.​
UGHYT enables scalable IoT-edge integration for smart cities, supporting anomaly alerts and adaptive signals. Future federated learning across regions promises cross-domain robustness for safer transportation.

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References

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Published

2024-12-28

How to Cite

REAL TIME EFFICIENT VEHICLE SPEED MONITORING AND TRAFFIC SURVEILLANCE SYSTEM USING DEEP LEARNING (Mohit Tiwari & Vikas Sakalle , Trans.). (2024). Cuestiones De Fisioterapia, 53(03), 6887-6893. https://doi.org/10.48047/znnhwa30