We propose a generalized formulation of direction of arrival estimation that includes many existing methods such as steered response power, subspace, coherent and incoherent, as well as speech sparsity-based methods. Unlike most conventional methods that rely exclusively on grid search, we introduce a continuous optimization algorithm to refine DOA estimates beyond the resolution of the initial grid. The algorithm is derived from the majorization-minimization (MM) technique. We derive two surrogate functions, one quadratic and one linear. Both lead to efficient iterative algorithms that do not require hyperparameters, such as step size, and ensure that the DOA estimates never leave the array manifold, without the need for a projection step. In numerical experiments, we show that the accuracy after a few iterations of the MM algorithm nearly removes dependency on the resolution of the initial grid used. We find that the quadratic surrogate function leads to very fast convergence, but the simplicity of the linear algorithm is very attractive, and the performance gap small.
翻译:我们建议对抵达估计方向作一般性的表述,其中包括许多现有的方法,如定向反应力、子空间、一致性和不一致性,以及基于语音宽度的方法。与大多数完全依赖网格搜索的传统方法不同,我们采用连续优化算法,以完善初始网格分辨率以外的DOA估计。算法来自主要-最小化(MM)技术。我们得出两种替代功能,一种四边和一种线性。这两种方法都导致高效的迭代算法,不需要超参数,例如步数大小,并确保DOA估计不会离开阵列的方形,而不需要投影步骤。在数字实验中,我们显示MM算法的几处迭代法的准确性几乎消除了对初始网格分辨率的依赖。我们发现,四方形代方形的函数导致非常快的趋同,但线形算法的简单性非常吸引人,性差很小。