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A modified MCMC approach for classifying target and decoy

机译:改进的MCMC方法,用于对目标和诱饵进行分类

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In towed radar active decoy (TRAD) scenario, the target and decoy, locating in same radar half-power beam, make object tracking more challenging in today's electronic warfare. Since the DOAs (direction-of-arrival) of target and decoy are the parameters of the likelihood of the observation data, the categorization of their becomes a sampling problem of machine learning field. Therefore, we, in this paper, propose a modified Markov Chain Monte Carlo (M-MCMC) approach towards classifying the target and decoy. First, we construct the observation signal model. Then, we find out that the parameters of the localization of target and decoy can be achieved by computing the covariance matrix of the observation vector. Moreover, rather than conventional numerical computation, our approach, intrinsically, combines the advantages of random walk and simulation annealing. The simulational results demonstrate the effectiveness of our approach.
机译:在牵引式雷达主动诱饵(TRAD)场景中,目标和诱饵位于同一雷达半功率波束中,因此在当今的电子战中,目标跟踪变得更具挑战性。由于目标和诱饵的DOA(到达方向)是观测数据的似然性的参数,因此它们的分类成为机器学习领域的一个采样问题。因此,我们在本文中提出了一种改进的马尔可夫链蒙特卡洛(M-MCMC)方法,用于对目标和诱饵进行分类。首先,我们建立观测信号模型。然后,我们发现可以通过计算观测向量的协方差矩阵来实现目标和诱饵定位的参数。而且,与传统的数值计算相比,我们的方法本质上结合了随机游走和模拟退火的优点。仿真结果证明了我们方法的有效性。

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