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2023-07-28
Khunchai, Seree, Kruekaew, Adool, Getvongsa, Natthapong.  2022.  A Fuzzy Logic-Based System of Abnormal Behavior Detection Using PoseNet for Smart Security System. 2022 37th International Technical Conference on Circuits/Systems, Computers and Communications (ITC-CSCC). :912—915.
This paper aims to contribute towards creating ambient abnormal behavior detection for smart security system from real-time human pose estimation using fuzzy-based systems. Human poses from keypoint detected by pose estimation model are transformed to as angle positions of the axis between human bodies joints comparing to reference point in the axis x to deal with problem of the position change occurred when an individual move in the image. Also, the article attempts to resolve the problem of the ambiguity interpreting the poses with triangular fuzzy logic-based system that determines the detected individual behavior and compares to the poses previously learnt, trained, and recorded by the system. The experiment reveals that the accuracy of the system ranges between 90.75% (maximum) and 84% (minimum). This means that if the accuracy of the system at 85%. The system can be applied to guide future research for designing automatic visual human behavior detection systems.