Seismic Target Classification Using a Wavelet Packet Manifold in Unattended Ground Sensors Systems

One of the most challenging problems in target classification is the extraction of a robust feature, which can effectively represent a specific type of targets. The use of seismic signals in unattended ground sensor (UGS) systems makes this problem more complicated, because the seismic target signal...

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Main Authors: Enliang Song, Baoqing Li, Xiaobing Yuan, Xin Zhang, Jingchang Huang, Qianwei Zhou
Format: Article
Language:English
Published: MDPI AG 2013-07-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/13/7/8534
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spelling doaj-4ad8461d3c514a2096c02797f538261f2020-11-24T23:55:18ZengMDPI AGSensors1424-82202013-07-011378534855010.3390/s130708534Seismic Target Classification Using a Wavelet Packet Manifold in Unattended Ground Sensors SystemsEnliang SongBaoqing LiXiaobing YuanXin ZhangJingchang HuangQianwei ZhouOne of the most challenging problems in target classification is the extraction of a robust feature, which can effectively represent a specific type of targets. The use of seismic signals in unattended ground sensor (UGS) systems makes this problem more complicated, because the seismic target signal is non-stationary, geology-dependent and with high-dimensional feature space. This paper proposes a new feature extraction algorithm, called wavelet packet manifold (WPM), by addressing the neighborhood preserving embedding (NPE) algorithm of manifold learning on the wavelet packet node energy (WPNE) of seismic signals. By combining non-stationary information and low-dimensional manifold information, WPM provides a more robust representation for seismic target classification. By using a K nearest neighbors classifier on the WPM signature, the algorithm of wavelet packet manifold classification (WPMC) is proposed. Experimental results show that the proposed WPMC can not only reduce feature dimensionality, but also improve the classification accuracy up to 95.03%. Moreover, compared with state-of-the-art methods, WPMC is more suitable for UGS in terms of recognition ratio and computational complexity.http://www.mdpi.com/1424-8220/13/7/8534wavelet packet transformmanifold learningseismic signalfeature extractiontarget classification
collection DOAJ
language English
format Article
sources DOAJ
author Enliang Song
Baoqing Li
Xiaobing Yuan
Xin Zhang
Jingchang Huang
Qianwei Zhou
spellingShingle Enliang Song
Baoqing Li
Xiaobing Yuan
Xin Zhang
Jingchang Huang
Qianwei Zhou
Seismic Target Classification Using a Wavelet Packet Manifold in Unattended Ground Sensors Systems
Sensors
wavelet packet transform
manifold learning
seismic signal
feature extraction
target classification
author_facet Enliang Song
Baoqing Li
Xiaobing Yuan
Xin Zhang
Jingchang Huang
Qianwei Zhou
author_sort Enliang Song
title Seismic Target Classification Using a Wavelet Packet Manifold in Unattended Ground Sensors Systems
title_short Seismic Target Classification Using a Wavelet Packet Manifold in Unattended Ground Sensors Systems
title_full Seismic Target Classification Using a Wavelet Packet Manifold in Unattended Ground Sensors Systems
title_fullStr Seismic Target Classification Using a Wavelet Packet Manifold in Unattended Ground Sensors Systems
title_full_unstemmed Seismic Target Classification Using a Wavelet Packet Manifold in Unattended Ground Sensors Systems
title_sort seismic target classification using a wavelet packet manifold in unattended ground sensors systems
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2013-07-01
description One of the most challenging problems in target classification is the extraction of a robust feature, which can effectively represent a specific type of targets. The use of seismic signals in unattended ground sensor (UGS) systems makes this problem more complicated, because the seismic target signal is non-stationary, geology-dependent and with high-dimensional feature space. This paper proposes a new feature extraction algorithm, called wavelet packet manifold (WPM), by addressing the neighborhood preserving embedding (NPE) algorithm of manifold learning on the wavelet packet node energy (WPNE) of seismic signals. By combining non-stationary information and low-dimensional manifold information, WPM provides a more robust representation for seismic target classification. By using a K nearest neighbors classifier on the WPM signature, the algorithm of wavelet packet manifold classification (WPMC) is proposed. Experimental results show that the proposed WPMC can not only reduce feature dimensionality, but also improve the classification accuracy up to 95.03%. Moreover, compared with state-of-the-art methods, WPMC is more suitable for UGS in terms of recognition ratio and computational complexity.
topic wavelet packet transform
manifold learning
seismic signal
feature extraction
target classification
url http://www.mdpi.com/1424-8220/13/7/8534
work_keys_str_mv AT enliangsong seismictargetclassificationusingawaveletpacketmanifoldinunattendedgroundsensorssystems
AT baoqingli seismictargetclassificationusingawaveletpacketmanifoldinunattendedgroundsensorssystems
AT xiaobingyuan seismictargetclassificationusingawaveletpacketmanifoldinunattendedgroundsensorssystems
AT xinzhang seismictargetclassificationusingawaveletpacketmanifoldinunattendedgroundsensorssystems
AT jingchanghuang seismictargetclassificationusingawaveletpacketmanifoldinunattendedgroundsensorssystems
AT qianweizhou seismictargetclassificationusingawaveletpacketmanifoldinunattendedgroundsensorssystems
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