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False alarm reduction by the And-ing of multiple multivariate Gaussian classifiers

机译:通过多变量高斯分类器和多变量的高斯分类器减少误报

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The high-resolution sonar is one of the principal sensors used by the Navy to detect and classify sea mines in minehunting 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 minehunting 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). In recent years, 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. This paper describes a method for training several multivariate Gaussian classifiers such that their And-ing dramatically reduces false alarms while maintaining a high probability of classification. This training approach is referred to as the Focused-
机译:高分辨率声纳是海军使用的主要传感器之一,以检测和分类Minupunting操作中的海洋地雷。对于这种声纳系统,已经致力于自动检测和分类(D / C)算法的大量努力。这些已经被几个因素刺激,包括(1)辅助运营商减少工作过载,(2)更加最佳地利用所有可用数据,以及(3)引入无人机的Mainhunting系统。海洋矿山通常铺设的环境(港口地区,运输车道和沿海)引起自然,生物学和人造杂乱引起的许多虚假警报。自动D / C算法的目的是消除大多数这些虚假警报,同时仍然保持矿山检测和分类(PDPC)的非常高的概率。近年来,研究了融合多个D / C算法的产出的好处。我们将此称为算法融合。结果是显着的,包括对新环境的可靠稳健性。本文介绍了一种训练多个多变量高斯分类器的方法,使得它们的和 - 在保持高概率的同时显着减少了误报。这种培训方法被称为聚焦 -

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