Abstract

Through-wall detection and classification are highly desirable for surveillance, security, and military applications in areas that cannot be sensed using conventional measures. In the domain of these applications, a key challenge is an ability not only to sense the presence of individuals behind the wall but also to classify their actions and postures. Researchers have applied ultrawideband (UWB) radars to penetrate wall materials and make intelligent decisions about the contents of rooms and buildings. As a form of UWB radar, stepped frequency continuous wave (SFCW) radars have been preferred due to their advantages. On the other hand, the success of classification with deep learning methods in different problems is remarkable. Since the radar signals contain valuable information about the objects behind the wall, the use of deep learning techniques for classification purposes will give a different direction to the research. This paper focuses on the classification of the human posture behind the wall using through-wall radar signals and a convolutional neural network (CNN). The SFCW radar is used to collect radar signals reflected from the human target behind the wall. These signals are employed to classify the presence of the human and the human posture whether he/she is standing or sitting by using CNN. The proposed approach achieves remarkable and successful results without the need for detailed preprocessing operations and long-term data used in the traditional approaches.

Highlights

  • The ability to image targets behind building walls or to detect people under debris including the classification of the human body has been drawing attention since the last decade

  • This paper focuses on the classification of the human posture behind the wall using through-wall radar signals and a convolutional neural network (CNN)

  • This study focuses on the assessment of the classification of the stepped frequency continuous wave (SFCW) radar signals in order to detect the absence of a human and the human posture using CNNs

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Summary

Introduction

The ability to image targets behind building walls or to detect people under debris including the classification of the human body has been drawing attention since the last decade. As a form of UWB radar, stepped frequency continuous wave (SFCW) radar approaches are commonly used in many practical applications including through-wall radar imaging and target ranging [3,4,5,6,7], medical imaging [8], and many applications utilizing ground penetrating radar (GPR), a kind of SFCW radar, for civil engineering [9, 10], structural static testing [11], quality estimation of the road surface layer [12], detection of pipes and cables buried in the ground [13, 14], archeological purposes [15], and unexploded ordnance disposal [16, 17] These studies rely on using SFCW radar signals since they make the spectrum accessible directly to the International Journal of Antennas and Propagation user.

SFCW Radar
Convolutional Neural Networks
Detection and Classification of the Human Posture
Experimental Setup and Results
Findings
Conclusion
Full Text
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