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首页> 外文期刊>IEEE Journal of Oceanic Engineering >Analysis of Signals Under Compositional Noise With Applications to SONAR Data
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Analysis of Signals Under Compositional Noise With Applications to SONAR Data

机译:成分噪声下的信号分析及其在声纳数据中的应用

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摘要

In this paper, we consider the problem of denoising and classification of SONAR signals observed under compositional noise, i.e., they have been warped randomly along the $x$ -axis. The traditional techniques do not account for such noise and, consequently, cannot provide a robust classification of signals. We apply a recent framework that: 1) uses a distance-based objective function for data alignment and noise reduction; and 2) leads to warping-invariant distances between signals for robust clustering and classification. We use this framework to introduce two distances that can be used for signal classification: a) a $y$-distance, which is the distance between the aligned signals; and b) an $x$-distance that measures the amount of warping needed to align the signals. We focus on the task of clustering and classifying objects, using acoustic spectrum (acoustic color), which is complicated by the uncertainties in aspect angles at data collections. Small changes in the aspect angles corrupt signals in a way that amounts to compositional noise. We demonstrate the use of the developed metrics in classification of acoustic color data and highlight improvements in signal classification over current methods.
机译:在本文中,我们考虑了在合成噪声下观察到的SONAR信号的降噪和分类问题,即它们已沿$ x $轴随机扭曲。传统技术无法解决此类噪声,因此无法提供可靠的信号分类。我们采用一种最新的框架:1)使用基于距离的目标函数进行数据对齐和降噪;和2)导致信号之间的翘曲不变距离,以实现稳健的聚类和分类。我们使用这个框架来引入两个可用于信号分类的距离:a)$ y $-距离,即对齐信号之间的距离; b)$ x $距离,用于测量对齐信号所需的弯曲量。我们专注于使用声谱(声学颜色)对对象进行聚类和分类的任务,由于数据收集中纵横比的不确定性,该任务变得很复杂。纵横比的微小变化会破坏信号,从而构成合成噪声。我们演示了在声学颜色数据分类中使用已开发的度量标准,并重点介绍了当前方法对信号分类的改进。

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