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Real-Time Multi-Class Disturbance Detection for Φ-OTDR Based on YOLO Algorithm

This paper proposes a real-time multi-class disturbance detection algorithm based on YOLO for distributed fiber vibration sensing. The algorithm achieves real-time detection of event location and classification on external intrusions sensed by distributed optical fiber sensing system (DOFS) based on...

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Detalles Bibliográficos
Autores principales: Xu, Weijie, Yu, Feihong, Liu, Shuaiqi, Xiao, Dongrui, Hu, Jie, Zhao, Fang, Lin, Weihao, Wang, Guoqing, Shen, Xingliang, Wang, Weizhi, Wang, Feng, Liu, Huanhuan, Shum, Perry Ping, Shao, Liyang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8915082/
https://www.ncbi.nlm.nih.gov/pubmed/35271143
http://dx.doi.org/10.3390/s22051994
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author Xu, Weijie
Yu, Feihong
Liu, Shuaiqi
Xiao, Dongrui
Hu, Jie
Zhao, Fang
Lin, Weihao
Wang, Guoqing
Shen, Xingliang
Wang, Weizhi
Wang, Feng
Liu, Huanhuan
Shum, Perry Ping
Shao, Liyang
author_facet Xu, Weijie
Yu, Feihong
Liu, Shuaiqi
Xiao, Dongrui
Hu, Jie
Zhao, Fang
Lin, Weihao
Wang, Guoqing
Shen, Xingliang
Wang, Weizhi
Wang, Feng
Liu, Huanhuan
Shum, Perry Ping
Shao, Liyang
author_sort Xu, Weijie
collection PubMed
description This paper proposes a real-time multi-class disturbance detection algorithm based on YOLO for distributed fiber vibration sensing. The algorithm achieves real-time detection of event location and classification on external intrusions sensed by distributed optical fiber sensing system (DOFS) based on phase-sensitive optical time-domain reflectometry (Φ-OTDR). We conducted data collection under perimeter security scenarios and acquired five types of events with a total of 5787 samples. The data is used as a spatial–temporal sensing image in the training of our proposed YOLO-based model (You Only Look Once-based method). Our scheme uses the Darknet53 network to simplify the traditional two-step object detection into a one-step process, using one network structure for both event localization and classification, thus improving the detection speed to achieve real-time operation. Compared with the traditional Fast-RCNN (Fast Region-CNN) and Faster-RCNN (Faster Region-CNN) algorithms, our scheme can achieve 22.83 frames per second (FPS) while maintaining high accuracy (96.14%), which is 44.90 times faster than Fast-RCNN and 3.79 times faster than Faster-RCNN. It achieves real-time operation for locating and classifying intrusion events with continuously recorded sensing data. Experimental results have demonstrated that this scheme provides a solution to real-time, multi-class external intrusion events detection and classification for the Φ-OTDR-based DOFS in practical applications.
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spelling pubmed-89150822022-03-12 Real-Time Multi-Class Disturbance Detection for Φ-OTDR Based on YOLO Algorithm Xu, Weijie Yu, Feihong Liu, Shuaiqi Xiao, Dongrui Hu, Jie Zhao, Fang Lin, Weihao Wang, Guoqing Shen, Xingliang Wang, Weizhi Wang, Feng Liu, Huanhuan Shum, Perry Ping Shao, Liyang Sensors (Basel) Communication This paper proposes a real-time multi-class disturbance detection algorithm based on YOLO for distributed fiber vibration sensing. The algorithm achieves real-time detection of event location and classification on external intrusions sensed by distributed optical fiber sensing system (DOFS) based on phase-sensitive optical time-domain reflectometry (Φ-OTDR). We conducted data collection under perimeter security scenarios and acquired five types of events with a total of 5787 samples. The data is used as a spatial–temporal sensing image in the training of our proposed YOLO-based model (You Only Look Once-based method). Our scheme uses the Darknet53 network to simplify the traditional two-step object detection into a one-step process, using one network structure for both event localization and classification, thus improving the detection speed to achieve real-time operation. Compared with the traditional Fast-RCNN (Fast Region-CNN) and Faster-RCNN (Faster Region-CNN) algorithms, our scheme can achieve 22.83 frames per second (FPS) while maintaining high accuracy (96.14%), which is 44.90 times faster than Fast-RCNN and 3.79 times faster than Faster-RCNN. It achieves real-time operation for locating and classifying intrusion events with continuously recorded sensing data. Experimental results have demonstrated that this scheme provides a solution to real-time, multi-class external intrusion events detection and classification for the Φ-OTDR-based DOFS in practical applications. MDPI 2022-03-03 /pmc/articles/PMC8915082/ /pubmed/35271143 http://dx.doi.org/10.3390/s22051994 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Communication
Xu, Weijie
Yu, Feihong
Liu, Shuaiqi
Xiao, Dongrui
Hu, Jie
Zhao, Fang
Lin, Weihao
Wang, Guoqing
Shen, Xingliang
Wang, Weizhi
Wang, Feng
Liu, Huanhuan
Shum, Perry Ping
Shao, Liyang
Real-Time Multi-Class Disturbance Detection for Φ-OTDR Based on YOLO Algorithm
title Real-Time Multi-Class Disturbance Detection for Φ-OTDR Based on YOLO Algorithm
title_full Real-Time Multi-Class Disturbance Detection for Φ-OTDR Based on YOLO Algorithm
title_fullStr Real-Time Multi-Class Disturbance Detection for Φ-OTDR Based on YOLO Algorithm
title_full_unstemmed Real-Time Multi-Class Disturbance Detection for Φ-OTDR Based on YOLO Algorithm
title_short Real-Time Multi-Class Disturbance Detection for Φ-OTDR Based on YOLO Algorithm
title_sort real-time multi-class disturbance detection for φ-otdr based on yolo algorithm
topic Communication
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8915082/
https://www.ncbi.nlm.nih.gov/pubmed/35271143
http://dx.doi.org/10.3390/s22051994
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