Litcius/Paper detail

Lightweight deep neural network for radio frequency interference detection and segmentation in synthetic aperture radar

Fenghao Zheng, Zhongmin Zhang, Dang Zhang

2024Scientific Reports6 citationsDOIOpen Access PDF

Abstract

Radio frequency interference (RFI) poses challenges in the analysis of synthetic aperture radar (SAR) images. Existing RFI suppression systems rely on prior knowledge of the presence of RFI. This paper proposes a lightweight neural network-based algorithm for detecting and segmenting RFI (LDNet) in the time-frequency domain. The network accurately delineates RFI pixel regions in time-frequency spectrograms. To mitigate the impact on the operational speed of the entire RFI suppression system, lightweight modules and pruning operations are introduced. Compared to threshold-based RFI detection algorithms, deep learning-based segmentation networks, and AC-UNet specifically designed for RFI detection, LDNet achieves improvements in mean intersection over union (MIoU) by 24.56%, 13.29%, and 7.54%, respectively.Furthermore, LDNet reduces model size by 99.03% and inference latency by 24.53% compared to AC-UNet.

Topics & Concepts

Synthetic aperture radarComputer scienceInterference (communication)Artificial neural networkArtificial intelligenceSegmentationRadarRemote sensingTelecommunicationsPattern recognition (psychology)Computer visionGeologyChannel (broadcasting)Advanced SAR Imaging TechniquesRadar Systems and Signal ProcessingSynthetic Aperture Radar (SAR) Applications and Techniques