DOI QR코드

DOI QR Code

Danger detection technology based on multimodal and multilog data for public safety services

  • Park, Hyunho (Defense & Safety ICT Research Department, Electronics and Telecommunications Research Institute) ;
  • Kwon, Eunjung (Defense & Safety ICT Research Department, Electronics and Telecommunications Research Institute) ;
  • Byon, Sungwon (Defense & Safety ICT Research Department, Electronics and Telecommunications Research Institute) ;
  • Shin, Won-Jae (Defense & Safety ICT Research Department, Electronics and Telecommunications Research Institute) ;
  • Jung, Eui-Suk (Defense & Safety ICT Research Department, Electronics and Telecommunications Research Institute) ;
  • Lee, Yong-Tae (Defense & Safety ICT Research Department, Electronics and Telecommunications Research Institute)
  • 투고 : 2020.09.25
  • 심사 : 2021.10.29
  • 발행 : 2022.04.10

초록

Recently, public safety services have attracted significant attention for their ability to protect people from crimes. Rapid detection of dangerous situations (that is, abnormal situations where someone may be harmed or killed) is required in public safety services to reduce the time required to respond to such situations. This study proposes a novel danger detection technology based on multimodal data, which includes data from multiple sensors (for example, accelerometer, gyroscope, heart rate, air pressure, and global positioning system sensors), and multilog data, which includes contextual logs of humans and places (for example, contextual logs of human activities and crime-ridden districts) over time. To recognize human activity (for example, walk, sit, and punch), the proposed technology uses multimodal data analysis with an attitude heading reference system and long short-term memory. The proposed technology also includes multilog data analysis for detecting whether recognized activities of humans are dangerous. The proposed danger detection technology will benefit public safety services by improving danger detection capabilities.

키워드

과제정보

This research was supported and funded by the Korean National Police Agency (Project Name: 112 Emergency Dispatch Decision Support System/Project Number: PR08-03-000-21).

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