


Seoul, South Korea will use drones and artificial intelligence to monitor traffic conditions next year
The Seoul City Government in South Korea recently announced that it will start using drones to monitor traffic conditions in real time from 2024
According to the Korea Herald, the City of Seoul plans to use drones to take traffic videos 200 meters above the ground, and then use artificial intelligence algorithms to analyze these videos and predict future traffic conditions. In order to establish a traffic management system using drones and artificial intelligence, the Seoul Metropolitan Government conducted multiple tests in September and October
According to reports, IT House learned that during the Seoul International Fireworks Festival held in October, drones flew over Yeouido in western Seoul to monitor crowds and road conditions near the venue. Similarly, during Halloween, drones also flew over Seongsu-dong in eastern Seoul and Hongdae area in western Seoul, mainly to monitor crowd density, traffic flow and road conditions in areas without surveillance cameras
The Seoul City Government hopes to use the combination of drones and artificial intelligence technology to more quickly identify and respond to possible traffic management problems in the future
It is reported that the traffic management data reported by the drones will be collected by the Traffic Management Center of the Seoul City Government this fall. Starting next year, they will share this information with the Seoul Police Agency and Seoul Facilities Corporation to make better decisions and handle traffic situations
Additionally, the drones will be used to inspect construction sites on the roads. The drone's cameras will determine whether construction sites violate any safety regulations, or if they take up too much road space, so that the drone can supplement the work of inspectors.
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