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Passive acoustic detection of diver based on SVM

机译:基于支持向量机的潜水员被动声学检测

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In terms of divers equipped with open-circuit respirator, this paper studies the radiated mechanism of the divers' breathing signals. A SVM(Support Vector Machine) based approach to identify their radiated signal is proposed. In this method, the received signal is firstly processed using STFT(short-time Fourier transform). Then, the energy characteristics for sub-bands associated with the remarkable frequency is extracted to reduce the effect of random noise. Lastly, SVM-based method is applied to train many samples to obtain classifier related to classifying the diver. Based on the pool experiment, the comparison in accurate rate of recognition between the proposed SVM method and NMF (Normalized multi-band matched filter) based on setting threshold value in frequency domain is conducted. In addition, the problem of low efficiency of discriminating threshold value in detection in the case of irregular breath of diver is discussed. It is noted that passive diver recognition mainly depends on the divers' breathing signals and the SVM method has higher accuracy than the NMF according to the same set of data.
机译:就潜水员配备开路呼吸器而言,本文研究了潜水员呼吸信号的辐射机理。提出了一种基于支持向量机的辐射信号识别方法。在这种方法中,首先使用STFT(短时傅立叶变换)处理接收到的信号。然后,提取与显着频率相关的子带的能量特性,以减少随机噪声的影响。最后,基于支持向量机的方法被用来训练许多样本以获得与潜水员分类有关的分类器。在合并实验的基础上,对所提出的支持向量机方法与基于频域设置阈值的NMF(归一化多频带匹配滤波器)的准确识别率进行了比较。另外,还讨论了在潜水员呼吸不规则的情况下检测阈值的效率低的问题。注意,根据同一组数据,被动潜水员识别主要取决于潜水员的呼吸信号,并且SVM方法比NMF具有更高的精度。

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