Gur Berke M, Niezrecki Christopher
Department of Mechanical Engineering, University of Massachusetts-Lowell, Lowell, Massachusetts 01854, USA.
J Acoust Soc Am. 2007 Jul;122(1):188-99. doi: 10.1121/1.2735111.
Recent interest in the West Indian manatee (Trichechus manatus latirostris) vocalizations has been primarily induced by an effort to reduce manatee mortality rates due to watercraft collisions. A warning system based on passive acoustic detection of manatee vocalizations is desired. The success and feasibility of such a system depends on effective denoising of the vocalizations in the presence of high levels of background noise. In the last decade, simple and effective wavelet domain nonlinear denoising methods have emerged as an alternative to linear estimation methods. However, the denoising performances of these methods degrades considerably with decreasing signal-to-noise ratio (SNR) and therefore are not suited for denoising manatee vocalizations in which the typical SNR is below 0 dB. Manatee vocalizations possess a strong harmonic content and a slow decaying autocorrelation function. In this paper, an efficient denoising scheme that exploits both the autocorrelation function of manatee vocalizations and effectiveness of the nonlinear wavelet transform based denoising algorithms is introduced. The suggested wavelet-based denoising algorithm is shown to outperform linear filtering methods, extending the detection range of vocalizations.
近期对西印度海牛(Trichechus manatus latirostris)发声的关注主要源于降低因船只碰撞导致海牛死亡率的努力。人们期望建立一个基于被动声学检测海牛发声的预警系统。这样一个系统的成功与可行性取决于在高背景噪声环境下对发声进行有效去噪。在过去十年中,简单有效的小波域非线性去噪方法已成为线性估计方法的替代方案。然而,这些方法的去噪性能会随着信噪比(SNR)的降低而显著下降,因此不适用于对典型信噪比低于0 dB的海牛发声进行去噪。海牛发声具有很强的谐波成分和缓慢衰减的自相关函数。本文介绍了一种高效的去噪方案,该方案利用了海牛发声的自相关函数以及基于非线性小波变换的去噪算法的有效性。所提出的基于小波的去噪算法表现优于线性滤波方法,扩展了发声的检测范围。