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Target recognition using HRR profile-based incoherent SAR (InSAR) image formation

机译:使用基于HRR概况的不连锁SAR(INSAR)图像形成的目标识别

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Feature-aided target verification is a challenging field of research, with the potential to yield significant increases in the confidence of re-established target tracks after kinematic confusion events. Using appropriate control algorithms airborne multi-mode radars can acquire a library of HRR (High Range Resolution) profiles for targets as they aretracked. When a kinematic confusion event occurs, such as a vehicle dropping below MDV (Minimum Detectable Velocity) for some period of time, or two target tracks crossing, it is necessary to utilize feature-aided tracking methods to correctly associate post-confusion tracks with pre-confusion tracks. Many current HRR profile target recognition methods focus on statistical characteristics of either individual profiles or sets of profiles taken over limited viewing angles. These methods have not proven to be very effective when the pre- and post- confusion libraries do not overlap inazimuth angle. To address this issue we propose a new approach to target recognition from HRR profiles. We present an algorithm that generates 2-D imagery of targets from the pre- and post-confusion libraries. These images are subsequently used as the input to a target recognition/classifier process. Since, center-aligned HRR Profiles, while ideal for processing, are not easily computed in field systems, as they require the airborne platform's center of rotation to line up with the geometric center of the moving target (this is impossible when multiple targets are being tracked), our algorithm is designed to work with HRR profiles that are aligned to the leading edge (the first detection above a threshold, commonly referred to as Edge-Aligned HRR profiles). Our simulated results demonstrate the effectiveness of this method for classifying target vehicles based on simulations using both overlapping and non-overlapping HRR profile sets. The algorithm was tested on several test cases using an input set of .28 m resolution XPATCH generated HRR profiles of 20 test vehicles (civilian and military) at various elevation angles.
机译:功能辅助目标验证是研究的一个具有挑战性的领域,以产生在重新建立目标轨道运动的混乱事件后的信心显著上升的潜力。因为他们aretracked使用适当的控制算法,机载多模雷达能够获得的HRR(高量程分辨率)型材库为目标。当的运动混乱事件发生时,如低于MDV(最小可检测速度)的车辆滴为一段时间,或两个目标轨道交叉,有必要利用特征辅助跟踪方法,以具有预先正确地关联后混乱轨道-confusion轨道。许多当前的HRR轮廓目标识别方法集中在的接管限制观看角度轮廓的任单个配置文件或组的统计特性。这些方法还没有被证明,当之前和之后的混乱库不重叠inazimuth角度是非常有效的。为了解决这个问题,我们提出从HRR型材目标识别的新方法。我们提出从前后混乱文库产生的目标对象物2-d的图像的算法。这些图像随后被用作输入到目标识别/分类处理。因为,中心对齐HRR配置文件,而理想的处理,不容易在现场系统计算,因为它们需要旋转机载平台的中心与所述移动目标的几何中心来排队(这是不可能的,当多个目标正在跟踪),我们的算法被设计为工作与被对准到前缘HRR型材(高于阈值的第一检测,通常被称为边沿对齐HRR配置文件)。我们的模拟结果表明对于基于使用两个重叠的和非重叠HRR简档组的模拟的目标车辆分类了该方法的有效性。该算法在使用输入集合中的各个仰角20辆测试车辆(民用和军用)0.28米生成分辨率XPATCH HRR型材几个测试用例测试。

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