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http://dx.doi.org/10.6109/jkiice.2020.24.12.1612

Development of Artificial Intelligence Processing Embedded System for Rescue Requester search  

La, Jong-Pil (INFOWORKS Corp.)
Park, Hyun Ju (INFOWORKS Corp.)
Abstract
Recently, research to reduce the accident rate by actively adopting artificial intelligence technology in the field of disaster safety technology is spreading. In particular, it is important to quickly search the Rescue Requester in order to effectively perform rescue activities at the disaster site. However, it is difficult to search for Rescue Requester due to the nature of the disaster environment. In this paper, We intend to develop an artificial intelligence system that can be operated in a smart helmet for firefighters to search for a rescue requester. To this end, the optimal SoC was selected and developed as an embedded system, and by testing a general-purpose artificial intelligence S/W, the embedded system for future smart helmet research was verified to be suitable as an artificial intelligence S/W operating platform.
Keywords
Artificial intelligence; Embedded system; Rescue requester search; NPU(Neural Processing Unit);
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Times Cited By KSCI : 6  (Citation Analysis)
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