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An improved underdetermined blind source separation of frequency hopping signals based on subspace projection

机译:基于子空间投影的跳频信号欠定盲源分离的改进

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The earlier separation methods for frequency hopping signals constrain that the number of sources must be less than that of sensors. In many practical applications, the above condition is not satisfied, so it is necessary to deal with cases when sensors are less. This paper considers the underdetermined blind separation of frequency hopping signals. The conventional algorithms for underdetermined blind separation of frequency hopping signals are assuming that the signals are sparse in time frequency domain. The mixtures need to satisfy the assumption that the active sources which contribute their energy at a point in time frequency domain are no more than that of sensors. This paper proposes an improved subspace projection method to address underdetermined blind separation problem. Firstly, it shows the mixtures model of frequency hopping signals in time domain, and also explains the mixing matrix structure. Secondly, in order to estimate the active sources at each time frequency point, Short Time Fourier Transform is exploited. Then, the effect of redundant signals is considered at each time frequency point so that a threshold value can be set. Thirdly, the number of active frequency hopping signals at each time frequency point can be estimated based on the improved subspace projection method. Simultaneously, the proposed method can identify which signals exist at each time frequency point. Finally, the time frequency representation of each frequency hopping signals can be achieved. The sources of frequency hopping signals can be obtained by Inverse Short Time Fourier Transformation. The numerical simulation results demonstrate the validity and high performance of the proposed algorithm compared to existing ones in underdetermined case.
机译:较早的跳频信号分离方法限制了信号源的数量必须少于传感器的数量。在许多实际应用中,不能满足上述条件,因此有必要处理传感器较少的情况。本文考虑跳频信号的不确定盲分离。用于未确定的跳频信号盲分离的常规算法是假设信号在时频域中稀疏。混合物需要满足这样的假设:在时域频点上贡献能量的有源源不超过传感器。本文提出了一种改进的子空间投影方法来解决不确定的盲分离问题。首先,它给出了时域跳频信号的混合模型,并说明了混合矩阵的结构。其次,为了估计每个时间频率点上的活动源,利用了短时傅立叶变换。然后,在每个时间频率点考虑冗余信号的影响,以便可以设置阈值。第三,可以基于改进的子空间投影方法来估计每个时间频率点处的有效跳频信号的数量。同时,所提出的方法可以识别在每个时间频率点存在哪些信号。最后,可以实现每个跳频信号的时频表示。跳频信号的源可通过逆短时傅立叶变换获得。数值仿真结果表明,在不确定情况下,该算法与现有算法相比具有较高的有效性。

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