Abstract

Removal of frequency-modulated continuous wave (FMCW) interference by zeroing corrupted samples causes significant distortions and peak power losses in the range-Doppler map. Existing methods aim to diminish these distortions by utilizing data from one dimension to reconstruct the corrupted samples, which do not perform well when a large number of samples are interfered and have difficulty recovering weak target signals.In this paper, model-based deep learning interference mitigation algorithms, called ALISTA and ALFISTA, are presented that reduce these artifacts by leveraging the full integration gain using all uncorrupted fast-time and slow-time samples. Simulations with 50% corrupted samples show that target peak power loss and velocity peak-to-sidelobe ratio (VPSR) with a 20-layer ALFISTA improves with 5.5 and 9.6 dB compared to zeroing. Furthermore, significant improvements in precision and recall are observed, even when large amounts (50-80%) of samples are missing.

Keywords:
Interference (communication) Computer science Radar Doppler effect SIGNAL (programming language) Range (aeronautics) Dimension (graph theory) Doppler radar Time–frequency analysis Continuous-wave radar Power (physics) Artificial intelligence Continuous wave Deep learning Radar imaging Acoustics Telecommunications Physics Channel (broadcasting) Mathematics Optics Materials science

Metrics

11
Cited By
5.72
FWCI (Field Weighted Citation Impact)
14
Refs
0.95
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Advanced SAR Imaging Techniques
Physical Sciences →  Engineering →  Aerospace Engineering
Radar Systems and Signal Processing
Physical Sciences →  Engineering →  Aerospace Engineering
Geophysical Methods and Applications
Physical Sciences →  Engineering →  Ocean Engineering
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