Journal Article10.1016/J.CIE.2020.106671
Artificial intelligence based data processing algorithm for video surveillance to empower industry 3.5
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TL;DR: A novel algorithm based on artificial intelligence for data processing that significantly reduces data transmission and storage and also improves the performance and experimental results show that suggested method reduces storage capacity up to 80% and shows promising performance.
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About: This article is published in Computers & Industrial Engineering. The article was published on 01 Oct 2020.
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Formation Control Algorithms for Multiple-UAVs: A Comprehensive Survey
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TL;DR: This study provides a comprehensive overview of video surveillance systems in smart cities, as well as the functions and challenges of those systems.
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