The antenna scanning period (ASP) of radar is a crucial parameter in electronic warfare (EW) which is used in many applications, such as radar work pattern recognition and emitter recognition. For antennas of radars and EW systems, which perform scanning circularly, the method based on threshold measurement is invalid. To overcome this shortcoming, this study proposes a method using the convolutional neural network (CNN) to recognize the ASP of radar under the condition that antennas of the radar and EW system both scan circularly. A system model is constructed, and factors affecting the received signal power are analyzed. A CNN model for rapid and accurate ASP radar classification is developed. A large number of received signal time–power ...
Neural networks were used to analyze a complex simulated radar environment which contains noisy rada...
Efficient jamming recognition capability is a prerequisite for radar anti-jamming and can enhance th...
In this project, we aim to use the self-collected datasets which is fully labelled to train a Convol...
With the increasing complexity of the electromagnetic environment and continuous development of rada...
Abstract Recently, due to the wide application of low probability of intercept (LPI) radar, lots of ...
Jamming is a big threat to the survival of a radar system. Therefore, the recognition of radar jammi...
AbstractA possible application of neural networks for timely and reliable recognition of radar signa...
For passive radar detection system, radar waveform recognition is an important research area. In thi...
A neural network recognition and tracking system is proposed for classification of radar pulses in a...
The intra-pulse modulation of radar emitter signals is a key feature for analyzing radar systems. Tr...
A neural network recognition and tracking system is proposed for classification of radar pulses in a...
This dissertation describes a new approach to target recognition, using radar returns and parallel p...
With the development of wireless communication technology, the electromagnetic interference (EMI) of...
This dataset refers to all the images+labels used for training a Convolutional Neural Network (CNN) ...
This paper investigates a novel radar concept that is based on a minimalistic, small-aperture antenn...
Neural networks were used to analyze a complex simulated radar environment which contains noisy rada...
Efficient jamming recognition capability is a prerequisite for radar anti-jamming and can enhance th...
In this project, we aim to use the self-collected datasets which is fully labelled to train a Convol...
With the increasing complexity of the electromagnetic environment and continuous development of rada...
Abstract Recently, due to the wide application of low probability of intercept (LPI) radar, lots of ...
Jamming is a big threat to the survival of a radar system. Therefore, the recognition of radar jammi...
AbstractA possible application of neural networks for timely and reliable recognition of radar signa...
For passive radar detection system, radar waveform recognition is an important research area. In thi...
A neural network recognition and tracking system is proposed for classification of radar pulses in a...
The intra-pulse modulation of radar emitter signals is a key feature for analyzing radar systems. Tr...
A neural network recognition and tracking system is proposed for classification of radar pulses in a...
This dissertation describes a new approach to target recognition, using radar returns and parallel p...
With the development of wireless communication technology, the electromagnetic interference (EMI) of...
This dataset refers to all the images+labels used for training a Convolutional Neural Network (CNN) ...
This paper investigates a novel radar concept that is based on a minimalistic, small-aperture antenn...
Neural networks were used to analyze a complex simulated radar environment which contains noisy rada...
Efficient jamming recognition capability is a prerequisite for radar anti-jamming and can enhance th...
In this project, we aim to use the self-collected datasets which is fully labelled to train a Convol...