Abstract

An acoustic–seismic mixed feature extraction method based on the wavelet coefficient energy ratio (WCER) of the target signal is proposed in this study for classifying vehicle targets in wireless sensor networks. The signal was decomposed into a set of wavelet coefficients using the à trous algorithm, which is a concise method used to implement the wavelet transform of a discrete signal sequence. After the wavelet coefficients of the target acoustic and seismic signals were obtained, the energy ratio of each layer coefficient was calculated as the feature vector of the target signals. Subsequently, the acoustic and seismic features were merged into an acoustic–seismic mixed feature to improve the target classification accuracy after the acoustic and seismic WCER features of the target signal were simplified using the hierarchical clustering method. We selected the support vector machine method for classification and utilized the data acquired from a real-world experiment to validate the proposed method. The calculated results show that the WCER feature extraction method can effectively extract the target features from target signals. Feature simplification can reduce the time consumption of feature extraction and classification, with no effect on the target classification accuracy. The use of acoustic–seismic mixed features effectively improved target classification accuracy by approximately 12% compared with either acoustic signal or seismic signal alone.

Highlights

  • Wireless sensor networks (WSNs) consist of nodes capable of sensing, signal processing, and communicating

  • Feature extraction methods of target signals applied to WSNs can be classified into two categories: Data fusion algorithms and algorithms based on a special sensor signal

  • 1, thewere variables with large differences the feature acoustic and seismic signal features of AAV3 considered as examples forin simplifying vectors are retained and the variables with differences are aggregated the variables in the feature vectors using thesmall hierarchical clustering method. into a cluster

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Summary

Introduction

Wireless sensor networks (WSNs) consist of nodes capable of sensing, signal processing, and communicating. The proposed algorithms based on the data fusion method [7,8] utilize target signals acquired from multi-sensors in WSNs to enhance the accuracy of target classification, but they require greater communication between nodes in a group or in a cluster and consume more energy. A time domain harmonics amplitude method [13], which extracts features from the energy of the target signal by estimating the strongest harmonic frequency and the harmonics’ amplitude from a template of the acoustic signal, was developed for vehicle classification in a sensor network. We propose a different approach to extract the signal feature based on the acoustic and seismic signals acquired from a single sensor node for vehicle classification.

WCER Feature Extraction Method
Wavelet Decomposition Based on à Trous Algorithm
Signal Feature Extraction
Feature Vector Simplification Using Hierarchical Cluster Method
Hierarchical Cluster Method
Comprasion of Two Feature Simplification Methods
Feature Vector Simplification Using Hierarchical Clustering
Support Vector Machine Classifier
Vehicle Classification Using SVM Classifier
Performance of WCER Method
Comparison with FFT-Based Feature Extraction Method
Conclusions
Findings
Flowchart
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