Yan Jiaquan, Sun Haixin, Chen Hailan, Junejo Naveed Ur Rehman, Cheng En
Key Laboratory of Underwater Acoustic Communication and Marine Information Technology, Ministry of Education, Xiamen University, Xiamen 361005, China.
School of Information Science and Engineering, Xiamen University, Xiamen 361005, China.
Sensors (Basel). 2018 Mar 22;18(4):936. doi: 10.3390/s18040936.
In this paper, a novel time-frequency signature using resonance-based sparse signal decomposition (RSSD), phase space reconstruction (PSR), time-frequency distribution (TFD) and manifold learning is proposed for feature extraction of ship-radiated noise, which is called resonance-based time-frequency manifold (RTFM). This is suitable for analyzing signals with oscillatory, non-stationary and non-linear characteristics in a situation of serious noise pollution. Unlike the traditional methods which are sensitive to noise and just consider one side of oscillatory, non-stationary and non-linear characteristics, the proposed RTFM can provide the intact feature signature of all these characteristics in the form of a time-frequency signature by the following steps: first, RSSD is employed on the raw signal to extract the high-oscillatory component and abandon the low-oscillatory component. Second, PSR is performed on the high-oscillatory component to map the one-dimensional signal to the high-dimensional phase space. Third, TFD is employed to reveal non-stationary information in the phase space. Finally, manifold learning is applied to the TFDs to fetch the intrinsic non-linear manifold. A proportional addition of the top two RTFMs is adopted to produce the improved RTFM signature. All of the case studies are validated on real audio recordings of ship-radiated noise. Case studies of ship-radiated noise on different datasets and various degrees of noise pollution manifest the effectiveness and robustness of the proposed method.
本文提出了一种基于共振的稀疏信号分解(RSSD)、相空间重构(PSR)、时频分布(TFD)和流形学习的新型时频特征,用于提取船舶辐射噪声的特征,称为基于共振的时频流形(RTFM)。这适用于在严重噪声污染情况下分析具有振荡、非平稳和非线性特征的信号。与传统方法不同,传统方法对噪声敏感且只考虑振荡、非平稳和非线性特征的某一方面,而所提出的RTFM可以通过以下步骤以时频特征的形式提供所有这些特征的完整特征签名:首先,对原始信号采用RSSD提取高振荡分量并舍弃低振荡分量。其次,对高振荡分量执行PSR,将一维信号映射到高维相空间。第三,采用TFD揭示相空间中的非平稳信息。最后,对流形分布应用流形学习以获取内在非线性流形。采用前两个RTFM的比例加法来生成改进的RTFM特征。所有案例研究均在船舶辐射噪声的真实音频记录上进行了验证。在不同数据集和不同程度噪声污染下的船舶辐射噪声案例研究表明了所提方法的有效性和鲁棒性。