Stochastic Maximum Likelihood (SML) is a popular direction of arrival (DOA) estimation technique in array signal processing. It is a parametric method that jointly estimates signal and instrument noise by maximum likelihood, achieving excellent statistical performance. Some drawbacks are the computational overhead as well as the limitation to a point-source data model with fewer sources than sensors. In this work, we propose a Sieved Maximum Likelihood (SiML) method. It uses a general functional data model, allowing an unrestricted number of arbitrarily-shaped sources to be recovered. To this end, we leverage functional analysis tools and express the data in terms of an infinite-dimensional sampling operator acting on a Gaussian random function. We show that SiML is computationally more efficient than traditional SML, resilient to noise, and results in much better accuracy than spectral-based methods.
翻译:托盘最大可能性(SML)是在阵列信号处理中最受欢迎的抵达估计技术(DOA),这是一种对信号和仪器噪音进行尽可能联合估计的参数方法,在统计方面表现良好,有些缺点是计算间接费用,以及对源比传感器少的点源数据模型的限制。在这项工作中,我们建议采用Sieeved最大可能性(SimML)方法。它使用一般功能数据模型,允许不限制数量的任意形状源被回收。为此,我们利用功能分析工具,用无孔不入的抽样操作员按高斯随机功能来表达数据。我们显示,SimML比传统的SML效率更高,对噪音有弹性,而且比光谱方法更准确。