Transient sonar signal classification using hidden Markov model and neural net

A. Kundu, George C. Chen, C. E. Persons
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引用次数: 55

Abstract

In ocean surveillance, a number of different types of transient signals are observed. These sonar signals are waveforms in one dimension (1-D), and often display an evolutionary pattern over the time scale. The hidden Markov model (HMM) is well-suited to classification of such 1-D signals. Following this intuition, the application of HMM to sonar transient classification is proposed and discussed in this paper. Toward this goal, three different feature vectors based on autoregressive (AR) model, Fourier power spectrum, and wavelet transforms are considered in our work. The neural net (NN) classifier has been successfully used for sonar transient classification. The same set of features as mentioned above is then used with an NN classifier. Some concrete experimental results using "DARPA standard data set I" with HMM and NN classification schemes are presented. Finally, a combined NN/HMM classifier is proposed, and its performance is evaluated with respect to individual classifiers.<>
基于隐马尔可夫模型和神经网络的瞬态声纳信号分类
在海洋监测中,可以观测到许多不同类型的瞬态信号。这些声纳信号是一维(1-D)的波形,并且经常在时间尺度上显示出进化模式。隐马尔可夫模型(HMM)非常适合于这种一维信号的分类。基于这种直觉,本文提出并讨论了HMM在声纳瞬态分类中的应用。为了实现这一目标,我们在工作中考虑了基于自回归(AR)模型、傅立叶功率谱和小波变换的三种不同特征向量。神经网络分类器已成功用于声纳瞬态分类。然后将上面提到的相同的特征集与NN分类器一起使用。在“DARPA标准数据集I”上采用HMM和NN分类方案,给出了一些具体的实验结果。最后,提出了一种神经网络/HMM组合分类器,并对其性能进行了相对于单个分类器的评价。
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