Zhu Qixuan, Sun Chao, Li Mingyang
School of Marine Science and Technology, Northwestern Polytechnical University, Xi'an, China.
J Acoust Soc Am. 2023 Nov 1;154(5):3062-3077. doi: 10.1121/10.0022374.
Matched-field processing (MFP) for underwater source localization serves as a generalized beamforming approach that assesses the correlation between the received array data and a dictionary of replica vectors. In this study, the processing scheme of MFP is reformulated by computing a statistical metric between two Gaussian probability measures with the cross-spectral density matrices (CSDMs). To achieve this, the Wasserstein metric, a widely used notion of metric in the space of probability measures, is employed for developing the processor to attach the intrinsic properties of CSDMs, expressing the underlying optimal value of the statistic. The Wasserstein processor uses the embedded metric structure to suppress ambiguities, resulting in the ability to distinguish between multiple sources. In this foundation, a multifrequency processor that combines the information at different frequencies is derived, providing improved localization statistics with deficient snapshots. The effectiveness and robustness of the Wasserstein processor are demonstrated using acoustic simulation and the event S5 of the SWellEx-96 experiment data, exhibiting correct localization statistics and a notable reduction in ambiguity. Additionally, this paper presents an approach to derive the averaged Bartlett processor by evaluating the Wasserstein metric between two Dirac measures, providing an innovative perspective for MFP.
用于水下声源定位的匹配场处理(MFP)是一种广义波束形成方法,它评估接收阵列数据与一组复制向量之间的相关性。在本研究中,通过计算两个具有互谱密度矩阵(CSDM)的高斯概率测度之间的统计度量,对MFP的处理方案进行了重新表述。为实现这一点,瓦瑟斯坦度量(概率测度空间中广泛使用的一种度量概念)被用于开发处理器,以利用CSDM的内在特性,表达统计量的潜在最优值。瓦瑟斯坦处理器利用嵌入的度量结构来抑制模糊性,从而能够区分多个声源。在此基础上,推导了一种组合不同频率信息的多频处理器,在快照不足的情况下提供了改进的定位统计。利用声学模拟和SWellEx - 96实验数据的S5事件,证明了瓦瑟斯坦处理器的有效性和稳健性,其展现出正确的定位统计且模糊性显著降低。此外,本文还提出了一种通过评估两个狄拉克测度之间的瓦瑟斯坦度量来推导平均巴特利特处理器的方法,为MFP提供了一个创新视角。