In this paper the problem of recognizing radar waveforms is addressed. Waveform classification is needed in spectrum sharing and radar-communications coexistence, cognitive radars and signal intelligence. Different radar waveforms exhibit different properties in time-frequency domain. We propose a deep learning method for waveform classification. The received signal is processed with Fourier synchrosqueezing transform that has excellent properties in revealing timevarying behavior, rate of, strength and number of oscillatory components in received signals. The resulting time-frequency description is represented as a bivariate image that is fed into a convolutional neural network. The proposed method has superior performance over the widely ...
In this paper, a system for identifying eight kinds of radar waveforms is explored. The waveforms ar...
This thesis aims to improve on the current classification capabilities of deep neural networks on tw...
This thesis aims to improve on the current classification capabilities of deep neural networks on tw...
In this paper the problem of recognizing radar waveforms is addressed for multipath fading channels....
In the increasingly complex electromagnetic environment of modern battlefields, how to quickly and a...
For passive radar detection system, radar waveform recognition is an important research area. In thi...
With the increasing complexity of the electromagnetic environment and continuous development of rada...
Abstract This paper presents a deep learning-based method to automatically recognize low probability...
Radar is widely used in aviation, meteorology and military fields, and radar pulse signal detection ...
In the field of electronic countermeasure, the recognition of radar signals is extremely important. ...
In this paper, an automatic radar waveform recognition system in a high noise environment is propose...
In this paper, an automatic radar waveform recognition system in a high noise environment is propose...
Abstract Recently, due to the wide application of low probability of intercept (LPI) radar, lots of ...
With the development of signal processing technology and the use of new radar systems, signal aliasi...
In this paper, a system for identifying eight kinds of radar waveforms is explored. The waveforms ar...
In this paper, a system for identifying eight kinds of radar waveforms is explored. The waveforms ar...
This thesis aims to improve on the current classification capabilities of deep neural networks on tw...
This thesis aims to improve on the current classification capabilities of deep neural networks on tw...
In this paper the problem of recognizing radar waveforms is addressed for multipath fading channels....
In the increasingly complex electromagnetic environment of modern battlefields, how to quickly and a...
For passive radar detection system, radar waveform recognition is an important research area. In thi...
With the increasing complexity of the electromagnetic environment and continuous development of rada...
Abstract This paper presents a deep learning-based method to automatically recognize low probability...
Radar is widely used in aviation, meteorology and military fields, and radar pulse signal detection ...
In the field of electronic countermeasure, the recognition of radar signals is extremely important. ...
In this paper, an automatic radar waveform recognition system in a high noise environment is propose...
In this paper, an automatic radar waveform recognition system in a high noise environment is propose...
Abstract Recently, due to the wide application of low probability of intercept (LPI) radar, lots of ...
With the development of signal processing technology and the use of new radar systems, signal aliasi...
In this paper, a system for identifying eight kinds of radar waveforms is explored. The waveforms ar...
In this paper, a system for identifying eight kinds of radar waveforms is explored. The waveforms ar...
This thesis aims to improve on the current classification capabilities of deep neural networks on tw...
This thesis aims to improve on the current classification capabilities of deep neural networks on tw...