Interpretable, Unrolled Deep Radar Beampattern Design

ICASSP 2023 - 2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)(2023)

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摘要
Optimizing a transmit MIMO radar waveform subject to the non-convex constant modulus constraint remains a problem of enduring interest. The past decade has seen a variety of tailored iterative approaches with various performance-complexity trade-offs. Despite promising work, iterative algorithms have a speed handicap and require meticulous parameter tuning. Once trained, a deep network can quickly regress the desired waveform coefficients, but it is a black box and may excel only when generous training is available. We present a fast, learned, and - for the first time - interpretable (FLI) deep learning approach by unrolling a state-of-the-art iterative optimization approach. We particularly leverage the recently proposed projection, descent, and retraction (PDR) algorithm and design a deep network where each PDR step is mapped to a layer in the neural network while preserving the non-convex constant modulus constraint. FLI breaks the trade-off between complexity and performance. It is near real-time with boosted performance – fidelity to the desired beampattern – compared to the state-of-the-art alternatives.
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black box,boosted performance - fidelity,deep network,desired beampattern,desired waveform coefficients,FLI,generous training,interpretable deep learning approach,meticulous parameter tuning,neural network,nonconvex constant modulus constraint,performance-complexity trade-offs,promising work,speed handicap,state-of-the-art iterative optimization approach,tailored iterative,trade-off between complexity,transmit MIMO radar waveform subject,unrolled deep radar beampattern design
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