Instituto Politécnico Nacional - Centro de Investigación en Computación, Mexico.
Sci Total Environ. 2014 Jan 15;468-469:724-37. doi: 10.1016/j.scitotenv.2013.08.085. Epub 2013 Sep 28.
Noise levels of common sources such as vehicles, whistles, sirens, car horns and crowd sounds are mixed in urban soundscapes. Nowadays, environmental acoustic analysis is performed based on mixture signals recorded by monitoring systems. These mixed signals make it difficult for individual analysis which is useful in taking actions to reduce and control environmental noise. This paper aims at separating, individually, the noise source from recorded mixtures in order to evaluate the noise level of each estimated source. A method based on blind deconvolution and blind source separation in the wavelet domain is proposed. This approach provides a basis to improve results obtained in monitoring and analysis of common noise sources in urban areas. The method validation is through experiments based on knowledge of the predominant noise sources in urban soundscapes. Actual recordings of common noise sources are used to acquire mixture signals using a microphone array in semi-controlled environments. The developed method has demonstrated great performance improvements in identification, analysis and evaluation of common urban sources.
车辆、口哨、警笛、汽车喇叭和人群声音等常见声源的噪声水平混合在城市声景中。如今,环境声学分析是基于监测系统记录的混合信号进行的。这些混合信号使得对单个信号的分析变得困难,而单个信号的分析对于采取行动减少和控制环境噪声是有用的。本文旨在从记录的混合物中单独分离噪声源,以便评估每个估计源的噪声水平。提出了一种基于盲反卷积和小波域盲源分离的方法。该方法为改进城市地区常见噪声源的监测和分析结果提供了基础。该方法通过基于城市声景中主要噪声源知识的实验进行验证。使用麦克风阵列在半受控环境中获取混合物信号,对常见噪声源进行实际记录。所开发的方法在常见城市声源的识别、分析和评估方面表现出了很好的性能提升。