多通道SAR框架下运动目标检测的粒子模糊决策框架

E. Jaya, B. T. Krishna
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引用次数: 3

摘要

目标检测是合成孔径雷达(SAR)研究的重要分支领域之一。它面临着一些挑战,由于静止的物体,导致散射信号的存在。许多研究人员在目标检测方面取得了成功,本文介绍了一种SAR中运动目标检测的方法。新开发的运动目标检测自适应粒子模糊系统(APFS- mtd)方案利用了APFS中的粒子群优化(PSO)、自适应模糊语言规则来识别目标位置。首先,从SAR接收到的信号经过广义氡-傅里叶变换(GRFT)、分数傅里叶变换(FrFT)和匹配滤波器,利用模糊函数(AF)计算相关性。然后,在搜索空间中识别目标的位置,并将其转发给所建议的APFS。本文提出的自适应遗传模糊系统是对标准自适应遗传模糊系统的改进。基于APFS的MTD的性能评估基于检测时间、漏靶率和均方误差(MSE)。该方法的最小检测时间为4.13[公式见文]s,最小MSE为677.19,最小移动目标率为0.145。
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A Particle Fuzzy Decisive Framework for Moving Target Detection in the Multichannel SAR Framework
Target detection is one of the important subfields in the research of Synthetic Aperture Radar (SAR). It faces several challenges, due to the stationary objects, leading to the presence of scatter signal. Many researchers have succeeded on target detection, and this work introduces an approach for moving target detection in SAR. The newly developed scheme named Adaptive Particle Fuzzy System for Moving Target Detection (APFS-MTD) as the scheme utilizes the particle swarm optimization (PSO), adaptive, and fuzzy linguistic rules in APFS for identifying the target location. Initially, the received signals from the SAR are fed through the Generalized Radon-Fourier Transform (GRFT), Fractional Fourier Transform (FrFT), and matched filter to calculate the correlation using Ambiguity Function (AF). Then, the location of target is identified in the search space and is forwarded to the proposed APFS. The proposed APFS is the modification of standard Adaptive genetic fuzzy system using PSO. The performance of the MTD based on APFS is evaluated based on detection time, missed target rate, and Mean Square Error (MSE). The developed method achieves the minimal detection time of 4.13[Formula: see text]s, minimal MSE of 677.19, and the minimal moving target rate of 0.145, respectively.
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