首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >AN APPROACH TO MAXIMUM LIKELIHOOD IDENTIFICATION OF AUTOREGRESSIVE MARINE MAMMAL SOURCES BY PASSIVE SONAR
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AN APPROACH TO MAXIMUM LIKELIHOOD IDENTIFICATION OF AUTOREGRESSIVE MARINE MAMMAL SOURCES BY PASSIVE SONAR

机译:被动声纳最大似然识别自回归海洋哺乳动物来源的方法

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In this paper we propose a marine mammal classification method that relies in the assumption that the sources are autoregressive (AR). By incorporating the AR coefficients of each source we make explicit their contribution to the signals at array sensors. A logarithmic likelihood function is introduced in the frequency domain so that all available information from the sources can be incorporated thus letting a proper classification. We show that it is possible to deal with different sources regardless the closeness of their center frequency and their relative location. In the simulations we explore the potential applications of our method in real situations where it is needed to identify sources as they are detected and localized.
机译:在本文中,我们提出了一种依靠源是归属(AR)的假设的海洋哺乳动物分类方法。 通过结合每个来源的AR系数,我们将它们对阵列传感器的信号进行了明确的贡献。 在频域中引入了对数似然函数,以便可以结合来自源的所有可用信息,从而让正确分类。 我们表明,无论其中心频率及其相对位置的近距离如何,都可以处理不同的源。 在模拟中,我们探讨了我们在需要识别和本地化时所需的实际情况中的方法的潜在应用。

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