Multimodal layer surveillance map based on anomaly detection using multi-agents for smart city security |
Shin, Hochul
(Department of Intelligent Robotics, Electronics and Telecommunications of Research Institute)
Na, Ki-In (Department of Intelligent Robotics, Electronics and Telecommunications of Research Institute) Chang, Jiho (Department of Intelligent Robotics, Electronics and Telecommunications of Research Institute) Uhm, Taeyoung (Intelligent Robotics R&D Division, Korea Institute of Robotics and Technology Convergence) |
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