基于算法融合的水雷自动探测与分类

G. Dobeck
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引用次数: 71

摘要

多种检测/分类算法的融合被证明是一种非常有效的方法,可以在保持高检测和分类概率的同时显著降低误报率。这已经在几次海军海上试验中得到证实。高分辨率声纳是海军在猎雷行动中用于探测和分类水雷的主要传感器之一。对于这样的声纳系统,大量的努力已经投入到自动检测和分类(D/C)算法的发展。这是由以下几个因素推动的:(1)帮助操作员减少工作负荷,(2)更优化地利用所有可用数据,以及(3)引入无人猎雷系统。通常埋设水雷的环境(港区、航道和沿海地区)会产生许多由自然、生物和人为杂波引起的假警报。自动化D/C算法的目标是消除大多数这些假警报,同时仍然保持非常高的地雷探测和分类(PdPc)的概率。研究了融合多种D/C算法输出的好处。我们称之为算法融合。结果是显著的,包括对新环境的可靠稳健性。尽管我们在水雷探测和分类领域获得了经验,但本文所述的原则是一般性的,可应用于任何D/C问题的融合(例如,用于弹道导弹防御的自动医疗诊断或自动目标识别)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithm fusion for automated sea mine detection and classification
The fusion of multiple detection/classification algorithms is proving a very powerful approach for dramatically reducing false alarm rate, while still maintaining a high probability of detection and classification. This has been demonstrated in several Navy sea tests. The high-resolution sonar is one of the principal sensors used by the Navy to detect and classify sea mines in mine hunting operations. For such sonar systems, substantial effort has been devoted to the development of automated detection and classification (D/C) algorithms. These have been spurred by several factors including (1) aids for operators to reduce work overload, (2) more optimal use of all available data, and (3) the introduction of unmanned mine hunting systems. The environments where sea mines are typically laid (harbor areas, shipping lanes, and the littorals) give rise to many false alarms caused by natural, biologic, and man-made clutter. The objective of the automated D/C algorithms is to eliminate most of these false alarms while still maintaining a very high probability of mine detection and classification (PdPc). The benefits of fusing the outputs of multiple D/C algorithms have been studied. We refer to this as algorithm fusion. The results have been remarkable, including reliable robustness to new environments. Even though our experience has been gained in the area of sea mine detection and classification, the principles described herein are general and can be applied to fusion of any D/C problem (e.g., automated medical diagnosis or automatic target recognition for ballistic missile defense).
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