Abstract

In order to identify the orientation or recognize the attitude of small symmetric magnetic anomaly objects at shallow depth, we propose a method of extracting local binary pattern (LBP) features from denoised magnetic anomaly signals and classifying symmetric magnetic objects that have different orientations based on support vector machine (SVM). First, nine component signals, such as magnetic gradient tensor matrix, total magnetic intensity (TMI), and so forth, are calculated from the original signal detected by the flux gate sensors. The nine component signals are processed by discrete wavelet transform (DWT), which aims to reduce noise and make the signal’s features clear. Then we extract LBP texture features from the denoised nine component signals. From the simulation analysis, we can conclude that the LBP texture features of the nine component signals have good interclass discrimination and intraclass aggregation, which can be used for pattern recognition. Finally, the LBP texture features are constructed into feature vectors. The orientations of symmetric ferromagnetic objects underground are identified by SVM based on the feature vectors. Through experiments, we can conclude that the orientation recognition accuracy rate reaches 90%. This suggests that we can obtain the details of magnetic anomalies through our method.

Highlights

  • There is currently little research on detecting the detailed information of small symmetric magnetic anomalies underground

  • Studying symmetric ferromagnetic objects and symmetry in geomagnetic signals is conducive to the exploration of detailed information on underground small targets

  • To classify and recognize objects based on magnetic anomaly data, many approaches to pattern recognition technology were improved [21], proposing textural features for image classification according to gray tone spatial dependence matrices that describe spatial relationships between pixel values

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Summary

Introduction

There is currently little research on detecting the detailed information (size, shape, orientation, etc.) of small symmetric magnetic anomalies underground. When we need to detect targets such as underground unexploded ordnance, iron pipe mines, or other ferromagnetic objects, we need to know the details of their shape, model, and orientation. It is necessary and urgent to find a magnetic detection method for obtaining a detailed information on small magnetic anomalies underground Most of these are symmetrical ferromagnetic objects. To classify and recognize objects based on magnetic anomaly data, many approaches to pattern recognition technology were improved [21], proposing textural features for image classification according to gray tone spatial dependence matrices that describe spatial relationships between pixel values.

Geomagnetic Gradient Tensor
Discrete Wavelet Transform
Local Binary Pattern Feature
Simulation and Analysis
Discrete
Experimental Verification
Findings
Conclusions
Full Text
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