A performance comparison between Conventional PNN and Multi-spread PNN in ship noise classification

M. Farrokhrooz, M. Karimi
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引用次数: 3

Abstract

The use of Probabilistic Neural Network (PNN) is very common in supervised pattern recognition applications. PNN is based on Bayes decision rule and it uses Gaussian Parzen windows for estimating the probability density functions (pdf) required in Bayes rule. The conventional PNN needs a single spread value for pdf estimation which is proportional to Gaussian window width. In this paper we will suggest the use of a multi-spread PNN structure whose spread values are estimated using the training data. In addition, we will introduce several new discriminating features of acoustic radiated noise which can be used for ship noise classification. These features will be used as discriminating features in the conventional and multi-spread PNN. Finally, the performance of the conventional PNN and the suggested multi-spread PNN in classifying real ship noise data will be compared. Results of this comparison show that the performance of the multi-spread PNN is better than the conventional PNN.
传统PNN与多扩展PNN在船舶噪声分类中的性能比较
概率神经网络(PNN)在有监督模式识别中应用非常普遍。PNN基于贝叶斯决策规则,使用高斯帕森窗估计贝叶斯规则所需的概率密度函数。传统的PNN需要一个与高斯窗宽成正比的扩展值进行pdf估计。在本文中,我们将建议使用多扩展PNN结构,其扩展值是使用训练数据估计的。此外,本文还介绍了几种新的声辐射噪声判别特征,可用于舰船噪声分类。这些特征将在传统和多扩展PNN中用作判别特征。最后,比较了传统PNN和建议的多扩展PNN在船舶噪声分类中的性能。对比结果表明,多扩散PNN的性能优于传统的PNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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