Smart Transportation Secure Traffic Analysis with Real-Time AI Models
Keywords:
AI models, real-time traffic analysis, smart transportation, machine learningAbstract
Smart transportation networks helps in increasing urban efficiency, mobility and reducing congestion. Real time AI models are required to save traffic control networks. This research paper analysis the traffic using advanced AI models like machine learning and deep learning which are used for prioritising the security, forecasting traffic anomaly, detecting and minimising congestion, accidents, and cyber threats to the traffic network.
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