Abstract
This paper proposes an event discrimination algorithm with probabilistic output for fiber optic perimeter security systems. Multiscale permutation entropy and the zero-crossing rate are employed to increase the efficiency of the algorithm and extract intrusion features. A probabilistic support vector machine is used to calculate multiple event probabilities by solving a convex quadratic programming problem. The experimental results demonstrate that the proposed algorithm can distinguish six intrusion events at an average recognition rate of 92.68% and in a processing time of 0.32 s. Compared with traditional discrimination methods, the proposed algorithm obtains more detailed information (probabilities) of intrusion events. The recognition results are obtained after analyzing the probabilities, which not only reduces the decision-making costs but also reduces the losses from erroneous decisions. Therefore, the proposed high-efficiency feature extraction method and reliable discrimination algorithm can be used to improve the monitoring efficiency of fiber optic perimeter security systems.
© 2018 IEEE
PDF Article
More Like This
Intelligent water perimeter security event recognition based on NAM-MAE and distributed optic fiber acoustic sensing system
Mingyang Sun, Miao Yu, Haoran Wang, Kaiwen Song, Xinyu Guo, Songfeng Xue, Hongwei Zhang, Yanbin Shao, Hongliang Cui, Tianying Chang, and Tianyu Zhang
Opt. Express 31(22) 37058-37073 (2023)
Cited By
You do not have subscription access to this journal. Cited by links are available to subscribers only. You may subscribe either as an Optica member, or as an authorized user of your institution.
Contact your librarian or system administrator
or
Login to access Optica Member Subscription