ISAR成像中平移运动估计的高效比例极大似然算法

T. Berger, S. Hamran
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引用次数: 5

摘要

在ISAR成像中,必须精确地知道目标和雷达之间的相对运动,以产生聚焦的雷达图像。必须补偿目标的平移运动,以便仅使用围绕固定中心点的旋转运动来成像目标。描述了一种基于Chirp-Z变换的最大似然(ML)平移运动估计算法的有效实现。如果从雷达到目标的瞄准线矢量不在物体的旋转平面内,或者在观测期间旋转平面发生了变化,强反射镜往往会对平移运动的估计产生偏差。距离轮廓的缩放显示了减少偏差。剪切平均算法与这里描述的算法类似,但它只估计平移运动到载波波长的一半以内。仿真和实验数据验证了该算法的有效性。图像清晰度测量用于表明缩放作为预处理步骤对实验数据的影响。所有结果与剪切平均和突出点处理技术得到的结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient scaled maximum likelihood algorithm for translational motion estimation in ISAR imaging
In ISAR imaging, the relative motion between the target and the radar must be known precisely to produce focused radar images. The translational motion of the target must be compensated for to use only the rotational motion around a fixed centre point for the imaging of the target. An efficient implementation of a maximum likelihood (ML) algorithm for translational motion estimation based on the Chirp-Z transform is described. If the line of sight vector from the radar to the target is not within the rotational plane of the object, or the rotational plane changes during the observation time, and strong reflectors tend to bias the estimate of translational motion. A scaling of range profiles is shown to reduce the bias. The shear average algorithm is similar to the algorithm described here, but it only estimates translational motion to within half the carrier wavelength. Simulated and experimental data are used to show the effectiveness of the algorithm. An image sharpness measure is used to indicate the effects of scaling as a preprocessing step on experimental data. All results are compared to those obtained by shear average and prominent point processing techniques.
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