光电工程, 2014, 41 (1): 16, 网络出版: 2014-02-26   

基于时频特征的光纤周界振动信号识别

The Vibration Signal Recognition of Optical Fiber Perimeter Based on Time-frequency Features
作者单位
合肥工业大学电气与自动化工程学院, 合肥 230009
摘要
在光纤周界安防系统中, 蓄意入侵和环境噪声均能引起光纤传感器振动, 在保证系统高灵敏度的前提下区分入侵和非入侵事件极为重要。为了有效识别各种光纤振动信号, 本文依据入侵和环境噪声引起的光纤振动信号在时域上的短时特性以及复小波域各尺度上能量分布特征, 提出了两级判别法识别光纤信号。第一级用时域特征, 短时能量和短时平均过零率判断是否有振动发生; 第二级用复小波提取光纤信号的能量分布特征, 联合时域特征形成特征矢量, 支持向量机 (SVM)作为分类器识别是否为入侵信号及入侵类型。实验结果表明, 此方法可以有效识别入侵信号和环境噪声引起的非入侵事件, 提高了系统报警率, 降低了误报率。
Abstract
In the optical fiber perimeter security system, both deliberate invasion and environmental noise can cause optical fiber sensor vibration. It is very important to distinguish the invasion and no invasion events under ensuring the high sensitivity of system. In order to identify the various fiber optic vibration signals effectively, we propose two-stage discriminative method based on the invasion and environmental noise vibration signals short features on time-domain as well as scale energy distribution on complex wavelet domain to recognize the fiber optic signal. The first level use the time-domain characteristics of short-time energy and short-time zero crossing rate to judge whether there is a vibration happening. The second level use complex wavelet extraction the energy distribution features, combining with the time domain characteristics form the characteristic vector, Support Vector Machine (SVM) as the classifier to identify whether it is a intrusion signal and intrusion type. The experiment results show that this method can identify the intrusion signals and environment noise signals effectively, improve the system alarm rate and reduce the nuisance alarm rate.
参考文献

[1] 杨斌, 皋魏, 席刚, 等. 定位型超远程全光纤周界安防系统 [J].激光与光电子学进展, 2011, 48(5): 050603.

    YANG Bin, GAO Wei, XI Gang, et al. Located super remote full optical boundary safty guarding system [J]. Lase & Optoelectronics Progress, 2011, 48(5): 050603.

[2] Seedahmed S M, Jim K, Yuvaraja V. Real-time distributed fiber optic sensor for security systems: performance, event classification and nuisance mitigation [J]. Photonic Sensors(S1674-9251), 2012, 2(3): 225-236.

[3] Seedahmed S M, Jim K. Robust event classification for a fiber optic perimeter intrusion detection system using level crossing feathers and artificial neural networks [J]. Proceedings of SPIE(S0277-786X), 2010, 7677: 767708.

[4] Seedahmed S M, Jim K. Elimination of rain-induced nuisance alarms in distributed fiber optic perimeter intrusion detection systems [J]. Proceeding of SPIE(S0277-786X), 2009, 7316: 731604.

[5] 罗光明, 李枭, 崔平贵, 等. 分布式光纤传感器的周界安防入侵信号识别 [J].光电工程, 2012, 39(10): 71-77.

    LUO Guangming, LI Xiao, CUI Pinggui, et al. The intrusion signal recognition of perimeter security of distributed fiber-optic senor [J]. Opto-Electronic Engineering, 2012, 39(10): 71-77.

[6] 杨正理. 采用小波变换的周界报警信号辨识 [J].光电工程, 2013, 40(1): 84-89.

    YANG Zhengli. Identification of perimeter alarm signal based on wavelet transform [J]. Opto-Electronic Engineering, 2013, 40(1): 84-89.

[7] JIANG Lihui, LIU Xiangming, ZHANG Feng. Multi-target recognition used in airpoty fiber fence warning system[C]//Proceeding of the ninth international conference on Machine Learning and Cybernetics, Qingdao, China, July 11-14, 2010: 1126-1129.

[8] 石宏理, 胡波. 双树复小波变换及其应用综述 [J].信息与电子工程, 2007, 5(3): 229-235.

    SHI Hongli, HU Bo. Survey of dual-tree complex wavelet transform and its application [J]. Information and Electronic Engineering, 2007, 5(3): 229-235.

[9] Selesnick I W, Baraniuk R G, Kingsbury N G. The dual-tree complex wavelet transform [J]. IEEE Signal Proceeding(S1053-5888), 2005, 12: 123-151.

[10] 刘伟, 王建平, 张崇巍. 基于 SVM的生物电阻抗人体内脏脂肪测量研究 [J].电子测量与仪器学报, 2011, 25(7): 648-652.

    LIU Wei, WANG Jianping, ZHANG Chongwei. Studyof bioelectrical impedance analysis methods forvisceral fat estimation using SVM [J]. Journal of Electronic Measurement and Instrument, 2011, 25(7): 648-652.

[11] 王安娜, 吴洁, 张丽娜. 一种基于动态剪枝二叉树的高炉故障诊断方法 [J].仪器仪表学报, 2007, 28(12): 2147-2151.

    WANG Anna, WU Jie, ZHANG Lina. Novel blast furnace fault diagnosis method based on dynamic pruned binary tree SVMs [J]. Chinese Journal of Scientific Instrument, 2007, 28(12): 2147-2151.

朱程辉, 瞿永中, 王建平. 基于时频特征的光纤周界振动信号识别[J]. 光电工程, 2014, 41(1): 16. ZHU Chenghui, QU Yongzhong, WANG Jianping. The Vibration Signal Recognition of Optical Fiber Perimeter Based on Time-frequency Features[J]. Opto-Electronic Engineering, 2014, 41(1): 16.

本文已被 3 篇论文引用
被引统计数据来源于中国光学期刊网
引用该论文: TXT   |   EndNote

相关论文

加载中...

关于本站 Cookie 的使用提示

中国光学期刊网使用基于 cookie 的技术来更好地为您提供各项服务,点击此处了解我们的隐私策略。 如您需继续使用本网站,请您授权我们使用本地 cookie 来保存部分信息。
全站搜索
您最值得信赖的光电行业旗舰网络服务平台!