首页> 外文期刊>Signal Processing, IET >Focusing inverse synthetic aperture radar images with higher-order motion error using the adaptive joint-time-frequency algorithm optimised with the genetic algorithm and the particle swarm optimisation algorithm - comparison and results
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Focusing inverse synthetic aperture radar images with higher-order motion error using the adaptive joint-time-frequency algorithm optimised with the genetic algorithm and the particle swarm optimisation algorithm - comparison and results

机译:使用遗传算法和粒子群优化算法优化的自适应联合时频算法聚焦具有高阶运动误差的合成孔径雷达逆向图像-比较和结果

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摘要

Algorithms based on the genetic algorithm (GA) and the particle swarm optimisation (PSO) algorithm were designed for focusing inverse synthetic aperture radar (ISAR) images that suffered from degradation because of Doppler smearing. These algorithms optimised the adaptive joint-time-frequency (AJTF) algorithm by replacing the exhaustive search as the primary search tool used to determine focusing parameters. The use of the PSO for ISAR image focusing is a unique application of this evolutionary search. Performance of the GA and the PSO were compared with the PSO producing the optimal results of being able to focus a 211 pulse ISAR image with second-order motion error in 9 s or 24% of the cost function calculations required for an exhaustive search. The PSO algorithm was then applied to a 211 pulse ISAR image with fourth-order motion error. The PSO algorithm was able to focus this image in 20 s with 33% of the cost function calculations required by the exhaustive search. This study also introduces a new method of determining basis function suitability using the fast Fourier transform.
机译:设计了基于遗传算法(GA)和粒子群优化(PSO)算法的算法,用于聚焦因多普勒拖尾而退化的逆合成孔径雷达(ISAR)图像。这些算法通过取代穷举搜索作为用于确定聚焦参数的主要搜索工具,优化了自适应联合时频(AJTF)算法。将PSO用于ISAR图像聚焦是这种进化搜索的独特应用。将GA和PSO的性能与PSO进行了比较,得出的最佳结果是能够在9 s内聚焦具有二阶运动误差的211脉冲ISAR图像,这是穷举搜索所需成本函数计算的24%。然后将PSO算法应用于具有四阶运动误差的211脉冲ISAR图像。 PSO算法能够在20 s内对图像进行聚焦,而穷举搜索需要33%的成本函数计算。这项研究还介绍了一种使用快速傅立叶变换确定基函数适用性的新方法。

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