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METHODS OF ANALYZING BIG DATA FROM VIDEO SURVEILLANCE SYSTEMS IN SMART CITIES

Abstract

This article examines methods of analyzing large-scale data (Big Data) obtained from video surveillance systems in smart cities. Technologies for data collection, storage and processing, deep learning algorithms, and real-time analysis systems are reviewed. Practical application areas and existing challenges are analyzed.

Keywords

Big Data, video surveillance, smart city, deep learning, data analysis, cloud technologies, artificial intelligence, real-time analysis.

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References

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