Radar-STDA: A High-Performance Spatial-Temporal Denoising Autoencoder for Interference Mitigation of FMCW Radars
Lulu Liu, Runwei Guan, Fei Ma, Jeremy Smith, Yutao Yue

TL;DR
Radar-STDA is a lightweight, high-speed deep learning autoencoder that effectively mitigates interference in millimeter-wave radars by leveraging spatial and temporal information, improving target detection in autonomous systems.
Contribution
We introduce Radar-STDA, a novel efficient denoising autoencoder that incorporates spatial-temporal data for interference mitigation in radar systems, and release the first synthetic radar interference dataset.
Findings
Achieves a maximum SINR of 17.08 dB with 140,000 parameters.
Runs at 207.6 FPS on RTX A4000 GPU.
Operates at 56.8 FPS on NVIDIA Jetson AGXXavier.
Abstract
With its small size, low cost and all-weather operation, millimeter-wave radar can accurately measure the distance, azimuth and radial velocity of a target compared to other traffic sensors. However, in practice, millimeter-wave radars are plagued by various interferences, leading to a drop in target detection accuracy or even failure to detect targets. This is undesirable in autonomous vehicles and traffic surveillance, as it is likely to threaten human life and cause property damage. Therefore, interference mitigation is of great significance for millimeter-wave radar-based target detection. Currently, the development of deep learning is rapid, but existing deep learning-based interference mitigation models still have great limitations in terms of model size and inference speed. For these reasons, we propose Radar-STDA, a Radar-Spatial Temporal Denoising Autoencoder. Radar-STDA is an…
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Taxonomy
TopicsAdvanced SAR Imaging Techniques · Wireless Signal Modulation Classification · Terahertz technology and applications
MethodsDenoising Autoencoder
