Micro-Doppler signatures are extremely valuable in the classification of a wide range of targets. This work investigates the effects of jamming on micro-Doppler classification performance and explores a potential deep topology enabling low bandwidth data fusion between nodes in a multistatic radar network. The topology is based on an array of three independent deep neural networks (DNNs) functioning cooperatively to achieve joint classification. In addition to this, a further DNN is trained to detect the presence of jamming and from this it attempts to remedy the degradation effects in the data fusion process. This is applied to real experimental data gathered with the multistatic radar system NetRAD, of a human operating with s...
A comprehensive and well-structured review on the application of deep learning (DL) based algorithms...
Radar jamming signal classification is valuable when situational awareness of radar systems is sough...
In this letter, we propose two methods for personnel recognition and gait classification using deep ...
Micro-Doppler signatures are extremely valuable in the classification of a wide range of targets. Th...
This paper investigates an implementation of an array of distributed neural networks, operating toge...
The work presented in this paper aims to distinguish between armed or unarmed personnel using multi...
With the great capabilities of deep classifiers for radar data processing come the risks of learning...
Deep learning techniques are subject to increasing adoption for a wide range of micro-Doppler applic...
In this work, it has been proven that radar systems in general can be applied for detecting multi-co...
Efficient jamming recognition capability is a prerequisite for radar anti-jamming and can enhance th...
The work presented in this paper aims to distinguish between armed or unarmed personnel using multi-...
This paper investigates the selection of different combinations of features at different multistati...
A consistent issue for detectors in radar systems is how to correctly distinguish target signals fro...
Deep neural networks have become increasingly popular in radar micro-Doppler classification; yet, a ...
In this work, the authors present results for classification of different classes of targets (car, s...
A comprehensive and well-structured review on the application of deep learning (DL) based algorithms...
Radar jamming signal classification is valuable when situational awareness of radar systems is sough...
In this letter, we propose two methods for personnel recognition and gait classification using deep ...
Micro-Doppler signatures are extremely valuable in the classification of a wide range of targets. Th...
This paper investigates an implementation of an array of distributed neural networks, operating toge...
The work presented in this paper aims to distinguish between armed or unarmed personnel using multi...
With the great capabilities of deep classifiers for radar data processing come the risks of learning...
Deep learning techniques are subject to increasing adoption for a wide range of micro-Doppler applic...
In this work, it has been proven that radar systems in general can be applied for detecting multi-co...
Efficient jamming recognition capability is a prerequisite for radar anti-jamming and can enhance th...
The work presented in this paper aims to distinguish between armed or unarmed personnel using multi-...
This paper investigates the selection of different combinations of features at different multistati...
A consistent issue for detectors in radar systems is how to correctly distinguish target signals fro...
Deep neural networks have become increasingly popular in radar micro-Doppler classification; yet, a ...
In this work, the authors present results for classification of different classes of targets (car, s...
A comprehensive and well-structured review on the application of deep learning (DL) based algorithms...
Radar jamming signal classification is valuable when situational awareness of radar systems is sough...
In this letter, we propose two methods for personnel recognition and gait classification using deep ...