Space Target Recognition Based on 4D RangeFrequency-Time-Power Radar Data Cube
IEEE Transactions on Aerospace and Electronic Systems(2024)
摘要
Radar-based space target recognition is crucial for the space target defense system. Employing micro-motion features as a means to differentiate space targets has proven to be effective. However, most existing space target recognition methods based on deep neural networks are difficult to analyze the underlying dependence between the four radar signal variables of time, range, frequency, and power. In this study, a framework for space target recognition is proposed, which utilizes a multi-domain radar tool called the fourdimensional (4D) Range-Frequency-Time-Power radar data cube to capture micro-motion features. The radar echoes are first transformed into a series of highresolution RD sequences. Next, the estimation method for scattering point information is applied to acquire four types of information related to the targets, which are subsequently used to generate the 4D radar data cube. The resulting 4D radar data cube is then inputted into a recently developed coordinate-temporal attention network (CTA-Net) to extract features and perform micro-motion classification. Finally, an electromagnetic (EM) computation dataset is collected to validate the performance of CTA-Net. This research thoroughly investigates multiple crucial parameters of the dataset on recognition performance. Additionally, the robustness of the proposed framework is demonstrated through a wide range of experimental results
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关键词
Radar data cube,Micro-motion,Space target,Attention module
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