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New inverse synthetic aperture radar algorithm for translational motion compensation

机译:用于平移运动补偿的新型逆合成孔径雷达算法

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Abstract: Inverse synthetic aperture radar (ISAR) is an imaging technique that shows real promise in classifying airborne targets in real time under all weather conditions. Over the past few years a large body of ISAR data has been collected and considerable effort has been expended to develop algorithms to form high- resolution images from this data. One important goal of workers in this field is to develop software that will do the best job of imaging under the widest range of conditions. The success of classifying targets using ISAR is predicated upon forming highly focused radar images of these targets. Efforts to develop highly focused imaging computer software have been challenging, mainly because the imaging depends on and is affected by the motion of the target, which in general is not precisely known. Specifically, the target generally has both rotational motion about some axis and translational motion as a whole with respect to the radar. The slant-range translational motion kinematic quantities must be first accurately estimated from the data and compensated before the image can be focused. Following slant- range motion compensation, the image is further focused by determining and correcting for target rotation. The use of the burst derivative measure is proposed as a means to improve the computational efficiency of currently used ISAR algorithms. The use of this measure in motion compensation ISAR algorithms for estimating the slant-range translational motion kinematic quantities of an uncooperative target is described. Preliminary tests have been performed on simulated as well as actual ISAR data using both a Sun 4 workstation and a parallel processing transputer array. Results indicate that the burst derivative measure gives significant improvement in processing speed over the traditional entropy measure now employed. !8
机译:摘要:逆合成孔径雷达(ISAR)是一种成像技术,在所有天气条件下实时显示机载目标的分类方面都显示出真正的希望。在过去的几年中,已经收集了大量的ISAR数据,并且已经花费了大量的精力来开发算法,以从这些数据中形成高分辨率图像。该领域工作人员的一个重要目标是开发一种软​​件,该软件将在最广泛的条件下发挥最佳成像效果。使用ISAR对目标进行分类的成功取决于形成这些目标的高度聚焦的雷达图像。开发高度聚焦的成像计算机软件的努力一直具有挑战性,这主要是因为成像取决于目标的运动并受其影响,而这种运动通常并不清楚。具体而言,目标总体上相对于雷达既具有围绕某个轴的旋转运动又具有平移运动。倾斜范围的平移运动运动量必须首先从数据中准确估算出来,然后才能对图像进行聚焦。在进行斜距运动补偿之后,通过确定和校正目标旋转进一步聚焦图像。提出使用突发导数测度作为提高当前使用的ISAR算法的计算效率的手段。描述了此措施在运动补偿ISAR算法中的使用,以估计不合作目标的倾斜范围平移运动运动量。已经使用Sun 4工作站和并行处理晶片机阵列对模拟和实际ISAR数据进行了初步测试。结果表明,与目前采用的传统熵测度相比,脉冲导数测度在处理速度上有显着提高。 !8

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