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Ground Target Detection, Classification and Sensor Fusion in Distributed Fiber Seismic Sensor Network

机译:分布式光纤地震传感器网络的地面目标检测,分类和传感器融合

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This paper describes the ground target detection, classification and sensor fusion problems in distributed fiber seismic sensor network. Compared with conventional piezoelectric seismic sensor used in UGS, fiber optic sensor has advantages of high sensitivity and resistance to electromagnetic disturbance. We have developed a fiber seismic sensor network for target detection and classification. However, ground target recognition based on seismic sensor is a very challenging problem because of the non-stationary characteristic of seismic signal and complicated real life application environment. To solve these difficulties, we study robust feature extraction and classification algorithms adapted to fiber sensor network. An united multi-feature (UMF) method is used. An adaptive threshold detection algorithm is proposed to minimize the false alarm rate. Three kinds of targets comprise personnel, wheeled vehicle and tracked vehicle are concerned in the system. The classification simulation result shows that the SVM classifier outperforms the GMM and BPNN. The sensor fusion method based on D-S evidence theory is discussed to fully utilize information of fiber sensor array and improve overall performance of the system. A field experiment is organized to test the performance of fiber sensor network and gather real signal of targets for classification testing.
机译:本文介绍了分布式光纤地震传感器网络中的地面目标检测,分类和传感器融合问题。与UGS中使用的传统压电地震传感器相比,光纤传感器具有高灵敏度和电磁干扰的优点。我们开发了一种用于目标检测和分类的光纤地震传感器网络。然而,基于地震传感器的地面目标识别是一个非常具有挑战性的问题,因为地震信号的非静止特性和复杂的现实生活应用环境。为了解决这些困难,我们研究了适用于光纤传感器网络的强大特征提取和分类算法。使用联合多特征(UMF)方法。提出了一种自适应阈值检测算法,以最小化误报率。三种目标包括人员,轮式车辆和跟踪车辆在系统中关注。分类仿真结果表明,SVM分类器优于GMM和BPNN。讨论了基于D-S证据理论的传感器融合方法,充分利用了光纤传感器阵列的信息,提高了系统的整体性能。组织了一个现场实验,以测试光纤传感器网络的性能,并收集对分类测试的真实信号的实际信号。

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