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Underwater transient and non transient signals classification using predictive neural networks

机译:基于预测神经网络的水下瞬态和非瞬态信号分类

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The project ASAROME (autonomous sailing robot for oceanographic measurements) is working on a small autonomous sailboat in order to make measurements and observations in the marine environment for long periods. In this project, perception plays an important role by giving an estimate of the speed of surface winds, the state of the sea surface and the rate of precipitation in wet weather. In this paper, the unknown signals are first encoded with different codes (ERB, MFCC, LPC, LPCC). Then the coded signals are modeled by two different methods of classification: predictive and k-nearest neighbor. The final part of the system uses local and global decision to recognize the class of the unknown signal. Experiments are conducted to compare the results obtained by different encodings. Our results show that MFCC does not represent the ideal approach for the recognition of underwater audio signals, but LPCC seems to be a better candidate.
机译:ASAROME(用于海洋测量的自主航行机器人)项目正在研究小型自主帆船,以便长时间在海洋环境中进行测量和观察。在这个项目中,感知通过估计地表风的速度,海面的状态以及潮湿天气下的降水率而起着重要的作用。在本文中,未知信号首先使用不同的代码(ERB,MFCC,LPC,LPCC)进行编码。然后,通过两种不同的分类方法对编码信号进行建模:预测邻居和k最近邻。系统的最后部分使用局部和全局决策来识别未知信号的类别。进行实验以比较通过不同编码获得的结果。我们的结果表明,MFCC并不是代表识别水下音频信号的理想方法,但是LPCC似乎是更好的选择。

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