Tejedor Javier, Macias-Guarasa Javier, Martins Hugo F, Piote Daniel, Pastor-Graells Juan, Martin-Lopez Sonia, Corredera Pedro, Gonzalez-Herraez Miguel
FOCUS S.L., 28804 Madrid, Spain.
Department of Electronics, University of Alcalá, 28801 Alcalá de Henares, Spain.
Sensors (Basel). 2017 Feb 12;17(2):355. doi: 10.3390/s17020355.
This paper presents a novel surveillance system aimed at the detection and classification of threats in the vicinity of a long gas pipeline. The sensing system is based on phase-sensitive optical time domain reflectometry (-OTDR) technology for signal acquisition and pattern recognition strategies for threat identification. The proposal incorporates contextual information at the feature level and applies a system combination strategy for pattern classification. The contextual information at the feature level is based on the tandem approach (using feature representations produced by discriminatively-trained multi-layer perceptrons) by employing feature vectors that spread different temporal contexts. The system combination strategy is based on a posterior combination of likelihoods computed from different pattern classification processes. The system operates in two different modes: (1) machine + activity identification, which recognizes the activity being carried out by a certain machine, and (2) threat detection, aimed at detecting threats no matter what the real activity being conducted is. In comparison with a previous system based on the same rigorous experimental setup, the results show that the system combination from the contextual feature information improves the results for each individual class in both operational modes, as well as the overall classification accuracy, with statistically-significant improvements.
本文提出了一种新型监测系统,旨在检测和分类长输天然气管道附近的威胁。传感系统基于用于信号采集的相敏光时域反射仪(-OTDR)技术和用于威胁识别的模式识别策略。该方案在特征级别纳入上下文信息,并应用系统组合策略进行模式分类。特征级别的上下文信息基于串联方法(使用由判别训练的多层感知器产生的特征表示),通过采用扩展不同时间上下文的特征向量来实现。系统组合策略基于从不同模式分类过程计算出的似然性的后验组合。该系统以两种不同模式运行:(1)机器+活动识别,识别特定机器正在进行的活动;(2)威胁检测,旨在检测威胁,无论正在进行的实际活动是什么。与基于相同严格实验设置的先前系统相比,结果表明,来自上下文特征信息的系统组合在两种运行模式下均提高了每个单独类别的结果以及整体分类准确率,且具有统计学上的显著改进。