Direction of arrival (DoA) estimation is a crucial task in sensor array signal processing, giving rise to various successful model-based (MB) algorithms as well as recently developed data-driven (DD) methods. This paper introduces a new hybrid MB/DD DoA estimation architecture, based on the classical multiple signal classification (MUSIC) algorithm. Our approach augments crucial aspects of the original MUSIC structure with specifically designed neural architectures, allowing it to overcome certain limitations of the purely MB method, such as its inability to successfully localize coherent sources. The deep augmented MUSIC algorithm is shown to outperform its unaltered version with a superior resolution.
翻译:到达方向估算是传感器阵列信号处理中的一项关键任务,它产生了各种成功的基于模型的算法以及最近开发的数据驱动(DD)方法,本文件根据传统的多信号分类(MUSIC)算法引入了新的混合MB/DD DoA估计结构,我们的方法增强了原MUSIC结构的关键方面,有专门设计的神经结构,使其能够克服纯粹的MB方法的某些局限性,例如无法成功地将连贯的来源本地化。