盲源分离在磁异常检测中的应用

E. Nieves, P. Beaujean, M. Dhanak
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引用次数: 2

摘要

磁异常探测是探测海洋环境中未爆弹药的有效手段。当多个目标的磁特征混合时,需要同时定位多个目标。独立分量分析(ICA)作为盲源分离的一种方法,已被应用于生物医学领域,用于分离与人体相关的各种电场和磁场信号。通过在单个或多个车辆上使用多个磁力计,ICA可以用于分离出磁测量的重叠信号。然而,由于与ICA过程相关的尺度和排列歧义,分离步骤导致在定位步骤中出现错误。这些问题得到了缓解,从而使成功的信号分离和定位成为可能。仿真结果表明,结合遗传算法的ICA算法能够在1 ~ 2米的精度范围内对两个海底磁目标进行定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Blind Source Separation to Magnetic Anomaly Detection Algorithms
Magnetic anomaly detection (MAD) is highly effective for detecting unexploded ordnance in marine environments. There is a need to localize multiple targets simultaneously when their magnetic signatures mix. Independent component analysis (ICA) has been used as a method for blind source separation in biomedical fields to separate various electrical and magnetic field signals associated with the human body. By using multiple magnetometers on single or multiple vehicles, ICA can be adapted to separate out the overlapping signals for a magnetic survey. However, due to scaling and permutation ambiguities associated with the ICA process, the separation step results in errors during the localization step. These issues are mitigated so that successful signal separation and localization becomes possible. According to simulations, the ICA algorithm combined with a genetic algorithm (GA) is able to produce localizations for two magnetic targets on the ocean floor within 1 to 2 meters of accuracy.
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