Real-Time AI-Enhanced Driver Monitoring Systems
Abstract
Driver distraction and fatigue have become major concerns for road transport authorities worldwide. Fatigued and distracted drivers' reaction times are delayed, they have decreased sensory perceptions, and their decision-making abilities are affected. They have an increased risk of being involved in a road accident, which can cause property damage and personal injury as well as fatalities. From 2019 to 2020, there was an increase in deaths on Australian roads of 3.8%, and fatalities involving heavy vehicles increased by 4.5%. A proposed increase in heavy vehicle accidents in New South Wales may not be a surprise given the percentage of all commuter travel that heavy vehicles represent. It is thus most important to design and implement an accurate driver monitoring system that can detect inattentive, distracted, and fatigued drivers as quickly and correctly as possible. While significant expertise currently resides within specialist personnel, the research now seeks to provide those analysts with an AI-enhanced driver monitoring system, presenting a live real-time video summarizing any instances of the driver being inattentive, fatigued, or tired.
References
- Tamanampudi, Venkata Mohit. "Automating CI/CD Pipelines with Machine Learning Algorithms: Optimizing Build and Deployment Processes in DevOps Ecosystems." Distributed Learning and Broad Applications in Scientific Research 5 (2019): 810-849.
- Pal, Dheeraj Kumar Dukhiram, et al. "AIOps: Integrating AI and Machine Learning into IT Operations." Australian Journal of Machine Learning Research & Applications 4.1 (2024): 288-311.
- Kodete, Chandra Shikhi, et al. "Determining the efficacy of machine learning strategies in quelling cyber security threats: Evidence from selected literatures." Asian Journal of Research in Computer Science 17.8 (2024): 24-33.
- Singh, Jaswinder. "Sensor-Based Personal Data Collection in the Digital Age: Exploring Privacy Implications, AI-Driven Analytics, and Security Challenges in IoT and Wearable Devices." Distributed Learning and Broad Applications in Scientific Research 5 (2019): 785-809.
- Alluri, Venkat Rama Raju, et al. "Serverless Computing for DevOps: Practical Use Cases and Performance Analysis." Distributed Learning and Broad Applications in Scientific Research 4 (2018): 158-180.
- Machireddy, Jeshwanth Reddy. "Revolutionizing Claims Processing in the Healthcare Industry: The Expanding Role of Automation and AI." Hong Kong Journal of AI and Medicine 2.1 (2022): 10-36.
- Tamanampudi, Venkata Mohit. "AI-Powered NLP Agents in DevOps: Automating Log Analysis, Event Correlation, and Incident Response in Large-Scale Enterprise Systems." Journal of Artificial Intelligence Research and Applications 4.1 (2024): 646-689.
- Singh, Jaswinder. "Social Data Engineering: Leveraging User-Generated Content for Advanced Decision-Making and Predictive Analytics in Business and Public Policy." Distributed Learning and Broad Applications in Scientific Research 6 (2020): 392-418.
- S. Kumari, “Real-Time AI-Driven Cybersecurity for Cloud Transformation: Automating Compliance and Threat Mitigation in a Multi-Cloud Ecosystem ”, IoT and Edge Comp. J, vol. 4, no. 1, pp. 49–74, Jun. 2024
- Tamanampudi, Venkata Mohit. "Leveraging Machine Learning for Dynamic Resource Allocation in DevOps: A Scalable Approach to Managing Microservices Architectures." Journal of Science & Technology 1.1 (2020): 709-748.