지능형 영상 감시 시스템에서 사람 자세 추정을 이용한 납치 상황 인식

A Kidnapping Detection Using Human Pose Estimation in Intelligent Video Surveillance Systems

초록

In this paper, a kidnapping detection scheme in which human pose estimation is used to classify accurately between kidnapping cases and normal ones is proposed. To estimate human poses from input video, human’s 10 joint information is extracted by OpenPose library. In addition to the features which are used in the previous study to represent the size change rates and the regularities of human activities, the human pose estimation features which are computed from the location of detected human’s joints are used as the features to distinguish kidnapping situations from the normal accompanying ones. A frame-based kidnapping detection scheme is generated according to the selection of J48 decision tree model from the comparison of several representative classification models. When a video has more frames of kidnapping situation than the threshold ratio after two people meet in the video, the proposed scheme detects and notifies the occurrence of kidnapping event. To check the feasibility of the proposed scheme, the detection accuracy of our newly proposed scheme is compared with that of the previous scheme. According to the experiment results, the proposed scheme could detect kidnapping situations more 4.73% correctly than the previous scheme.

키워드

Intelligent Video Surveillance SystemsKidnapping DetectionHuman Pose EstimationMachine LearningClassification Schemes
제목
지능형 영상 감시 시스템에서 사람 자세 추정을 이용한 납치 상황 인식
제목 (타언어)
A Kidnapping Detection Using Human Pose Estimation in Intelligent Video Surveillance Systems
저자
박주현송광호김유성
DOI
10.9708/jksci.2018.23.08.009
발행일
2018-08
유형
Y
저널명
한국컴퓨터정보학회논문지
23
8
페이지
9 ~ 16