Zhang Xinglin, Liu Huan, Wang Zehua, Dong Haobin, Ge Jian, Liu Zheng
School of Automation, China University of Geosciences, Wuhan 430074, China.
School of Engineering, University of British Columbia Okanagan Campus, Kelowna, British Columbia V1V 1V7, Canada.
Rev Sci Instrum. 2022 Apr 1;93(4):045107. doi: 10.1063/5.0088254.
The magnetic anomalies generated by the ferromagnetic targets are usually buried within uncontrollable interference sources, such as the power frequency and random noises. In particular, the variability of the geomagnetic field and the low signal-to-noise ratio (SNR) of the magnetic anomalies cannot be avoided. In this paper, to improve the performance of magnetic anomaly detection (MAD) with a low SNR, we propose a novel structured low-rank (SLR) decomposition-based MAD method. In addition, a new framework based on the SLR and singular value decomposition (SVD) is constructed, dubbed SLR-SVD, and the corresponding working principle and implemented strategy are elaborated. Through comparing the SLR-SVD with two state-of-the-art methods, including principal component analysis and SVD, the results demonstrate that the proposed SLR-SVD can not only suppress the noise sufficiently, i.e., improving 55.26% approximately of the SNR, but also retain more boundary information of magnetic anomalies, i.e., decreasing approximately 68.05% of the mean squared error and improving approximately 28.47% of the structural similarity index.
由铁磁目标产生的磁异常通常埋藏在不可控的干扰源中,如工频和随机噪声。特别是,地磁场的变化性以及磁异常的低信噪比(SNR)是无法避免的。在本文中,为了提高低信噪比下磁异常检测(MAD)的性能,我们提出了一种基于新颖的结构化低秩(SLR)分解的MAD方法。此外,构建了一个基于SLR和奇异值分解(SVD)的新框架,称为SLR-SVD,并阐述了相应的工作原理和实现策略。通过将SLR-SVD与两种先进方法(主成分分析和SVD)进行比较,结果表明,所提出的SLR-SVD不仅能够充分抑制噪声,即信噪比提高约55.26%,而且还能保留更多磁异常的边界信息,即均方误差降低约68.05%,结构相似性指数提高约28.47%。