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Non-Cooperative Target Recognition by Means of Singular Value Decomposition Applied to Radar High Resolution Range Profiles

机译:基于奇异值分解的非合作目标识别应用于雷达高分辨率测距剖面

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摘要

Radar high resolution range profiles are widely used among the target recognition community for the detection and identification of flying targets. In this paper, singular value decomposition is applied to extract the relevant information and to model each aircraft as a subspace. The identification algorithm is based on angle between subspaces and takes place in a transformed domain. In order to have a wide database of radar signatures and evaluate the performance, simulated range profiles are used as the recognition database while the test samples comprise data of actual range profiles collected in a measurement campaign. Thanks to the modeling of aircraft as subspaces only the valuable information of each target is used in the recognition process. Thus, one of the main advantages of using singular value decomposition, is that it helps to overcome the notable dissimilarities found in the shape and signal-to-noise ratio between actual and simulated profiles due to their difference in nature. Despite these differences, the recognition rates obtained with the algorithm are quite promising.
机译:雷达高分辨率测距剖面在目标识别社区中广泛用于检测和识别飞行中的目标。在本文中,奇异值分解用于提取相关信息,并将每架飞机作为子空间建模。识别算法基于子空间之间的角度,并且发生在变换域中。为了拥有广泛的雷达特征数据库并评估性能,将模拟的距离剖面用作识别数据库,而测试样本包括在测量活动中收集的实际距离剖面的数据。由于将飞机建模为子空间,因此在识别过程中仅使用了每个目标的宝贵信息。因此,使用奇异值分解的主要优点之一是,由于其本质上的差异,它有助于克服在实际轮廓和模拟轮廓之间的形状和信噪比方面发现的显着差异。尽管存在这些差异,使用该算法获得的识别率还是很有希望的。

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