AWSPNet: Attention-based Dual-Tree Wavelet Scattering Prototypical Network for MIMO Radar Target Recognition and Jamming Suppression
Yizhen Jia, Siyao Xiao, Wenkai Jia, Hui Chen, Wen-Qin Wang

TL;DR
This paper presents AWSPNet, a deep learning framework combining wavelet transforms, attention, and prototypical networks for robust MIMO radar target recognition and jamming suppression in noisy environments.
Contribution
The paper introduces AWSPNet, a novel deep learning model that integrates wavelet features, attention mechanisms, and prototypical networks for improved radar target recognition and jamming suppression.
Findings
Achieves 90.45% accuracy at -6 dB SNR.
Effectively discriminates targets from jamming signals.
Provides a practical algorithm for target recognition and jamming suppression.
Abstract
The increasing of digital radio frequency memory based electronic countermeasures poses a significant threat to the survivability and effectiveness of radar systems. These jammers can generate a multitude of deceptive false targets, overwhelming the radar's processing capabilities and masking targets. Consequently, the ability to robustly discriminate between true targets and complex jamming signals, especially in low signal-to-noise ratio (SNR) environments, is of importance. This paper introduces the attention-based dual-tree wavelet scattering prototypical network (AWSPNet), a deep learning framework designed for simultaneous radar target recognition and jamming suppression. The core of AWSPNet is the encoder that leverages the dual-tree complex wavelet transform to extract features that are inherently robust to noise and signal translations. These features are further refined by an…
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Taxonomy
TopicsWireless Signal Modulation Classification · Radar Systems and Signal Processing · Advanced SAR Imaging Techniques
