Shi Yi, Liu Hanfang, Zhang Wentao, Cheng Zhongdi, Chen Jiewei, Sun Qian
Opt Express. 2024 Feb 26;32(5):8321-8334. doi: 10.1364/OE.514878.
Phase-sensitive optical time domain reflectometer (Φ-OTDR) is an emergent distributed optical sensing system with the advantages of high localization accuracy and high sensitivity. It has been widely used for intrusion identification, pipeline monitoring, under-ground tunnel monitoring, etc. Deep learning-based classification methods work well for Φ-OTDR event recognition tasks with sufficient samples. However, the lack of training data samples is sometimes a serious problem for these data-driven algorithms. This paper proposes a novel feature synthesizing approach to solve this problem. A mixed class approach and a reinforcement learning-based guided training method are proposed to realize high-quality feature synthesis. Experiment results in the task of eight event classifications, including one unknown class, show that the proposed method can achieve an average classification accuracy of 42% for the unknown class and obtain its event type, meanwhile achieving a 74% average overall classification accuracy. This is 29% and 7% higher, respectively, than those of the ordinary instance synthesizing method. Moreover, this is the first time that the Φ-OTDR system can recognize a specific event and tell its event type without collecting its data sample in advance.
相敏光时域反射仪(Φ-OTDR)是一种新兴的分布式光学传感系统,具有高定位精度和高灵敏度的优点。它已被广泛用于入侵识别、管道监测、地下隧道监测等。基于深度学习的分类方法在有足够样本的Φ-OTDR事件识别任务中表现良好。然而,对于这些数据驱动的算法来说,缺乏训练数据样本有时是一个严重的问题。本文提出了一种新颖的特征合成方法来解决这个问题。提出了一种混合类方法和一种基于强化学习的引导训练方法来实现高质量的特征合成。在包括一个未知类别的八类事件分类任务中的实验结果表明,该方法对于未知类可以达到42%的平均分类准确率并获得其事件类型,同时实现74%的平均总体分类准确率。这分别比普通实例合成方法高出29%和7%。此外,这是Φ-OTDR系统首次能够在不预先收集其数据样本的情况下识别特定事件并说出其事件类型。