2024
DOI: 10.3390/rs16224131
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Adaptive Multi-Function Radar Temporal Behavior Analysis

Zhenjia Xu,
Qingsong Zhou,
Zhihui Li
et al.

Abstract: The performance of radar mode recognition has been significantly enhanced by the various architectures of deep learning networks. However, these approaches often rely on supervised learning and are susceptible to overfitting on the same dataset. As a transitional phase towards Cognitive Multi-Functional Radar (CMFR), Adaptive Multi-Function Radar (AMFR) possesses the capability to emit identical waveform signals across different working modes and states for task completion, with dynamically adjustable waveform… Show more

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