首页> 外文期刊>EURASIP journal on advances in signal processing >Noise-robust range alignment method for inverse synthetic aperture radar based on aperture segmentation and average range profile correlation
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Noise-robust range alignment method for inverse synthetic aperture radar based on aperture segmentation and average range profile correlation

机译:基于孔径分割和平均范围轮廓相关性的逆合成孔径雷达噪声鲁棒型对准方法

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Range alignment is an essential procedure in the translation motion compensation of inverse synthetic aperture radar imaging. Global optimization or maximum-correlation-based algorithms have been used to realize range alignment. However, it is still challenging to achieve range alignment in low signal-to-noise ratio scenarios, which are common in inverse synthetic aperture radar imaging. In this paper, a novel anti-noise range alignment approach is proposed. In this new method, the target motion is modeled as a uniformly accelerated motion during a short sub-aperture time. Minimum entropy optimization is implemented to estimate the motion parameters in each sub-aperture. These estimated parameters can be used to align the profiles of the current sub-aperture. Once the range profiles of each sub-aperture are aligned, the non-coherent accumulation gain is obtained by averaging all profiles in each sub-aperture, which can be used as valuable information. The accumulation and correlation method is applied to align the average range profiles of each sub-aperture because the former step focuses mainly on alignment within the sub-apertures. Experimental results based on simulated and real measured data demonstrate the effectiveness of the proposed algorithm in low signal-to-noise ratio scenarios.
机译:范围对齐是逆合孔径雷达成像的平移运动补偿中的基本程序。已经使用全局优化或基于最大关联的算法来实现范围对齐。然而,在低信噪比场景中实现范围对准仍然具有挑战性,这在逆合成孔径雷达成像中是常见的。本文提出了一种新型抗噪声范围对准方法。在该新方法中,目标运动在短的子孔径时间内被建模为均匀加速的运动。实现了最小熵优化以估计每个子孔径中的运动参数。这些估计的参数可用于对准当前子孔径的轮廓。一旦每个子孔径的范围轮廓对齐,通过平均每个子孔径中的所有配置文件来获得非相干累积增益,这可以用作有价值的信息。施加累积和相关方法以对准每个子孔径的平均范围轮廓,因为前一步主要侧重于子孔内的对准。基于模拟和实测数据的实验结果证明了所提出的算法在低信噪比场景中的有效性。

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