Joint FrFT-FFT basis compressed sensing and adaptive iterative optimization for countering suppressive jamming |
Zhao, Yang
(Department of Electronics and Optics, Army Engineering University)
Shang, Chaoxuan (Department of Electronics and Optics, Army Engineering University) Han, Zhuangzhi (Department of Electronics and Optics, Army Engineering University) Yin, Yuanwei (Department of Electronics and Optics, Army Engineering University) Han, Ning (Department of Electronics and Optics, Army Engineering University) Xie, Hui (Department of Electronics and Optics, Army Engineering University) |
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