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A Classification Framework for Correlated Sample Space in Cognitive Radar

机译:认知雷达相关样本空间的分类框架

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We have proposed a machine-learning based classification framework for cognitive radar for target state classification. Based on the estimated frequency of the received signal at the radar receiver, we have classified three rotational movements (yaw, pitch, and roll) of a maneuvering aircraft motion. Direct classification of the data sets for the different rotational movement was found non-separable. It is difficult to find a classier to construct linear boundary for the classification of this data sets. We intended to design an algorithm for this problem. The proposed algorithm is applied on separable, half separable and non-separable data sets. The success rate of the classifier was verified in terms of cross-validation, mean square error, type I and type II error. The algorithm has shown a success rate of approximately 87.28% and 99.15% for not-separable and separable data sets respectively. It also shows that the increment in the accuracy by 6.86% as compared with the conventional approach [12].
机译:我们提出了一种基于机器学习的对认知雷达的分类框架,用于目标状态分类。基于雷达接收器的接收信号的估计频率,我们已经分类了机动飞机运动的三个旋转运动(偏航,俯仰和卷)。发现不同旋转运动的数据集的直接分类是不可分离的。很难找到一个Claserier来构建线性边界以进行此数据集的分类。我们打算为此问题设计一种算法。所提出的算法应用于可分离,半可分离和不可分离的数据集。分类器的成功率在交叉验证方面验证,均方误差,I型和II型错误。该算法分别示出了不可分离和可分离数据集的成功率约为87.28%和99.15%。它还表明,与传统方法相比,精度的增量在6.86%[12]相比下。

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