Artificial Intelligence Techniques in Smart Cities Surveillance Using UAVs: A Survey
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Preeti Nagrath | Rachna Jain | D. Jude Hemanth | Narina Thakur | Dharmender Saini | Nitika Sharma | Narina Thakur | D. Hemanth | P. Nagrath | Rachna Jain | D. Saini | Nitika Sharma
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