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Marine vessels acoustic radiated noise classification in passive sonar using probabilistic neural network and spectral features

机译:基于概率神经网络和频谱特征的被动声纳中船舶声辐射噪声分类

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Development of intelligent systems for classifying marine vessels based on their acoustic radiated noise is of major importance in the sonar systems. This paper focuses on three topics. The first topic is applying some modifications to the conventional Probabilistic Neural Network (PNN), as a common classifier in supervised pattern recognition, and suggesting a new configuration of PNN which we call it, Multi-Spread Probabilistic Neural Network (MSPNN). The second topic is proposing a method for estimating the required spread values of MSPNN from training data. The third topic is introducing discriminating features which can be used for ship noise classification. These features are: the poles of autoregressive (AR) model with proper order, the coefficients of AR model with proper order and six features which are directly extracted from Power Spectral Density (PSD) of acoustic radiated noise of marine vessels. The performance of the conventional PNN and the suggested multi-spread PNN in classifying real ship noise data will be examined in this paper. A bank of 71 files of real radiated ship noise data is used for this performance evaluation. The results of this performance examination show that the proposed features are suitable for ship noise classification and the performance of the multi-spread PNN is generally better than the conventional PNN.
机译:在声纳系统中,开发基于声辐射噪声对船舶进行分类的智能系统至关重要。本文着重于三个主题。第一个主题是对常规概率神经网络(PNN)进行一些修改,作为监督模式识别中的常见分类器,并提出一种称为PNN的新配置,即多重扩展概率神经网络(MSPNN)。第二个主题是提出一种从训练数据中估计MSPNN所需散布值的方法。第三个主题是介绍可用于船舶噪声分类的区分特征。这些特征是:具有适当阶数的自回归(AR)模型的极点,具有适当阶数的AR模型的系数以及直接从船用声辐射噪声的功率谱密度(PSD)中提取的六个特征。本文将研究常规PNN和建议的多次扩展PNN在对真实船舶噪声数据进行分类中的性能。此性能评估使用了71组实际辐射的船舶噪声数据文件。该性能检查的结果表明,所提出的特征适合于船舶噪声分类,并且多扩展PNN的性能通常优于常规PNN。

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