Litcius/Paper detail

LPI Radar Signals Modulation Recognition Based on ACDCA-ResNeXt

Xudong Wang, Guiguang Xu, Yan He, Daiyin Zhu, Ying Wen, Zehu Luo

2023IEEE Access21 citationsDOIOpen Access PDF

Abstract

For low probability of intercept (LPI) radar waveform identification accuracy (ACC) problem at low Signal-to-Noise Ratios (SNRs), an approach based on time-frequency analysis (TFA) and Asymmetric Dilated Convolution Coordinate Attention Residual networks (ACDCA-ResNeXt) is proposed to recognize twelve kinds of LPI radar signals automatically. First, we apply Choi-Williams distribution (CWD), which shows superior performance at low SNRs, to transforming radar signals into time-frequency images (TFI). Then, in order to obtain the high-quality TFIs, a series of image processing techniques, including 2DWiener filtering, image cutting, and image resize, are used to remove the background noise and redundant frequency bands of the TFI and obtain a fixed-size gray scale image containing main morphological features of the TFI. Finally, the TFIs are input into ACDCA-ResNeXt network that can extract and learn deep features to recognize radar waveforms. Furthermore, a fusion loss function, which is composed of a soft-label smoothed cross entropy loss function and a center loss function, improves the generalization capability performance of network and achieves a better clustering effect. Experimental results demonstrate that, for twelve kinds of LPI radar waveforms, the overall recognition ACC of the proposed approach achieves 97.94% when SNR is -8 dB.

Topics & Concepts

Computer scienceModulation (music)RadarSpeech recognitionTelecommunicationsPhysicsAcousticsWireless Signal Modulation ClassificationGeophysical Methods and ApplicationsAdvanced Measurement and Detection Methods