Violation Monitoring System for Power Construction Site

Automatic detection of violations will improve the efficiency of enterprise management and reduce the workload of employees. In this paper, a construction site monitoring system based on Tiny-yolo-dense is developed for three common violations of electric power construction site: no safety helmet, safety gloves and no labour suits. The experimental results show that the system can meet the requirements of real-time and accuracy of power construction site monitoring.

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