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A Non-Convex Approach To Joint Sensor Calibration And Spectrum Estimation

机译:联合传感器校准和频谱估计的非凸方法

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Blind sensor calibration for spectrum estimation is the problem of estimating the unknown sensor calibration parameters as well as the parameters-of-interest of the impinging signals simultaneously from snapshots of measurements obtained from an array of sensors. In this paper, we consider blind phase and gain calibration (BPGC) problem for direction-of-arrival estimation with multiple snapshots of measurements obtained from an uniform array of sensors, where each sensor is perturbed by an unknown gain and phase parameter. Due to the unknown sensor and signal parameters, BPGC problem is a highly nonlinear problem. Assuming that the sources are uncorrelated, the covariance matrix of the measurements in a perfectly calibrated array is a Toeplitz matrix. Leveraging this fact, we first change the nonlinear problem to a linear problem considering certain rank-one positive semidefinite matrix, and then suggest a non-convex optimization approach to find the factor of the rank-one matrix under a unit norm constraint to avoid trivial solutions. Numerical experiments demonstrate that our proposed non-convex optimization approach provides better or competitive recovery performance than existing methods in the literature, without requiring any tuning parameters.
机译:用于频谱估计的盲传感器校准是一个问题,该问题是从一组传感器获得的测量快照中同时估计未知传感器校准参数以及撞击信号的感兴趣参数。在本文中,我们考虑了到达相位估计的盲相位和增益校准(BPGC)问题,该问题具有从统一传感器阵列获得的多个测量快照,其中每个传感器都受到未知的增益和相位参数的干扰。由于未知的传感器和信号参数,BPGC问题是一个高度非线性的问题。假设源不相关,则在完美校准的阵列中,测量的协方差矩阵为Toeplitz矩阵。利用这一事实,我们首先考虑某些秩一正半定矩阵,将非线性问题变为线性问题,然后提出一种非凸优化方法,以在单位范数约束下找到秩矩阵的因数,从而避免微不足道。解决方案。数值实验表明,我们提出的非凸优化方法可以比文献中的现有方法提供更好的或具有竞争性的恢复性能,而无需任何调整参数。

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