A robust and sparse Direction of Arrival (DOA) estimator is derived based on general loss functions. It is an M-estimator because it is derived as an extremum estimator for which the objective function is a sample average. In its derivation it is assumed that the array data follows a Complex Elliptically Symmetric (CES) distribution with zero-mean and finite second-order moments. Four loss functions are discussed in detail: the Gauss loss which is the Maximum-Likelihood (ML) loss for the circularly symmetric complex Gaussian distribution, the ML-loss for the complex multivariate t-distribution (MVT) with {\nu} degrees of freedom, as well as Huber and Tyler loss functions. For Gauss loss, the method reduces to Sparse Bayesian Learning (SBL). The root mean square DOA error of the derived estimators is discussed for Gaussian, MVT, and $\epsilon$-contaminated array data. The robust SBL estimators perform well for all cases and nearly identical with classical SBL for Gaussian noise.
翻译:以一般损失函数为基础,得出一个稳健和稀散的抵抵运估计值方向。这是一个 M 估计值,因为它是作为Exterremum 估计值,其目标函数为平均样本。在推断中,假设阵列数据遵循的是零度和有限的第二阶秒的复杂椭圆对称分布法。详细讨论了四个损失函数:高萨、MVT和$\epsilon$受污染的阵列数据,所得估计值的根正正方方方方差错误是高萨、MVT和$\epsilon$的测算数据。强大的SBLSestimantators在所有案件中运行良好,且与Sgramin B 数据几乎完全相同。