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Comparison of Sparse Signal Separation Algorithms for Maritime Radar Target Detection

机译:海上雷达目标检测中稀疏信号分离算法的比较

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Due to the non-stationary nature of sea clutter, traditional maritime radar detection schemes utilise non-coherent processing. To further enhance the detection performance, one alternative is to use sparse signal separation. This is an alternative paradigm, whereby the different spatio-temporal characteristics of the radar signal are exploited to separate targets from the background interference. In previous work, the sparse signal separation problem has been posed in a compressive sensing framework so as to improve detection of small maritime targets. This paper investigates the performance of three different algorithms for solving the signal separation problem. These include the Split Augmented Lagrangian Shrinkage Algorithm (SALSA), adaptive Complex Approximate Message Passing (CAMP) and the Fast Sparse Functional Iteration Algorithm (FSFIA). The first contribution is to reformulate the CAMP algorithm to the framework of sparse signal separation. The suitability of each algorithm is then assessed using real data from the Ingara radar, and is based on the quality of the solutions obtained, the computational speed and the robustness to the user's choice of `tuning' parameters.
机译:由于海杂波的非平​​稳性质,传统的海上雷达检测方案利用了非相干处理。为了进一步提高检测性能,一种替代方法是使用稀疏信号分离。这是一种替代范例,利用雷达信号的不同时空特性将目标与背景干扰区分开。在先前的工作中,在压缩感测框架中提出了稀疏信号分离问题,以改善对小型海上目标的探测。本文研究了三种解决信号分离问题的算法的性能。其中包括分割增强拉格朗日收缩算法(SALSA),自适应复杂近似消息传递(CAMP)和快速稀疏功能迭代算法(FSFIA)。第一个贡献是将CAMP算法重新构造为稀疏信号分离的框架。然后,使用来自Ingara雷达的真实数据评估每种算法的适用性,并基于获得的解决方案的质量,计算速度和对用户选择“调整”参数的鲁棒性。

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