Author:
Benyahia Zakaria,Hefnawi Mostafa,Aboulfatah Mohamed,Abdelmounim Hassan,Gadi Taoufiq
Abstract
This paper proposes a two-stage deep-learning approach for frequency modulated continuous waveform multiple‐input multiple‐output (FMCW MIMO) radar embedded in cluttered and jammed environments. The first stage uses the support vector machine (SVM) as a feature extractor that discriminates targets from clutters and jammers. In the second stage, the angle, range, and Doppler estimations of the extracted targets are treated by the SqueezeNet deep convolutional neural network (DCNN) as a multilabel classification problem. The performance of the proposed hybrid SVM-SqueezeNet method is very close to the one achieved by the SqueezeNet only but with the advantage of identifying the type of targets and reducing the training time required by the SqueezeNet.
Reference39 articles.
1. Code Optimization for Fast Chirp FMCW Automotive MIMO Radar
2. Coherent Automotive Radar Networks: The Next Generation of Radar-Based Imaging and Mapping
3. Li B., Wang S., Feng Z., Zhang J., Cao X., and Zhao C.. Fast Pseudospectrum Estimation for Automotive Massive MIMO Radar. arXiv: 1911.07434v3, Dec 2021.
4. Coherent Automotive Radar Networks: The Next Generation of Radar-Based Imaging and Mapping
5. Pfeffer C., Feger R., Wagner C. and Stelzer A.. FMCW MIMO Radar System for Frequency-Division Multiple TX-Beamforming. IEEE transactions on microwavetheory and techniques vol. 61, no. 12, decembre 2013
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