光时域反射计
光学
光纤
光纤传感器
入侵
纤维
光子晶体光纤
材料科学
计算机科学
渐变折射率纤维
物理
地质学
地球化学
复合材料
作者
Z.D. Zhou,Xiankun Wang,Tao Xie,Jun Qu,Junjie Shi,Dawei Zhang,Jiansheng Peng,Songlin Zhuang
出处
期刊:Optics Express
[The Optical Society]
日期:2025-04-23
卷期号:33 (10): 20272-20272
摘要
Distributed optical fiber vibration sensing systems (DVS) are widely employed in perimeter security for their high sensitivity, simplicity, and strong immunity to electromagnetic interference. However, these systems are facing with two serious challenges: accurately classifying closed-set signals (known events) and detecting open-set signals (unknown events). To address this, we propose an open-set recognition framework, ResEff-OpenGAN-LN. By integrating layer normalization into the OpenGAN architecture, this framework mitigates instability caused by input feature variations while leveraging ResEff for efficient feature extraction to enhance closed-set classification. Experimental results show that ResEff achieves 99.92% accuracy on closed-set tasks, and ResEff-OpenGAN-LN obtains an AUROC of 0.9900 with 96.63% overall accuracy on mixed datasets containing open-set and closed-set signals, validating its potential to improve intrusion detection and reduce false alarms.
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