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Blind separation to improve classification of traffic noise

机译:盲分离以改善交通噪声的分类

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In order to apply noise mapping to traffic noise prediction, a knowledge of several information about traffic characteristics is required to predict the noise levels emitted by the roads involved. In the European case, the CNOSSOS-EU calculation method for traffic-noise level prediction is now under discussion, to be agreed in response to the European Directive relating to the Assessment and Management of Environmental Noise (2002/49/EC). In this application context, standard ISO 1996-2:2007 Determination of Environmental Noise Levels, in its Section 6.2, specifically mentions that during L_eq measurements of road traffic noise the number of vehicle pass-bys shall be counted during the measurement time interval. This information is often not available in many roads, so it is typically registered by means of casual counts, often through manual procedures. Besides, if the measurement result is converted to other traffic conditions, a categorization of the vehicles involved is also required. Some additional information, such as the traffic density and the average speed, should be registered if a calculation method is used to build a noise map. In this paper a new automatic classification system of traffic noise covering these requirements is presented. The portable system processes a two channel audio recording to provide information of the average speed and the number of vehicles, which are classified in six categories during the measurement period. After several evaluations of the possibilities to get a good classification of the noise emission of a road from audio recordings, it is shown that increasing the within-class separation, as well as introducing a novel BSS-PCA-based classifier, the precision achieved in the final results is substantially improved.
机译:为了将噪声映射应用于交通噪声预测,需要有关交通特征的若干信息的知识以预测所涉及的道路发出的噪声水平。在欧洲,正在讨论用于交通噪声水平预测的CNOSSOS-EU计算方法,以响应有关环境噪声评估和管理的欧洲指令(2002/49 / EC)。在此应用环境中,标准ISO 1996-2:2007环境噪声水平的确定在其第6.2节中特别提到,在对道路交通噪声进行L_eq测量期间,应在测量时间间隔内计算车辆通过的次数。该信息通常在许多道路上都不可用,因此通常通过临时计数(通常通过手动程序)进行注册。此外,如果将测量结果转换为其他交通状况,则还需要对涉及的车辆进行分类。如果使用一种计算方法来构建噪声图,则应记录一些其他信息,例如交通密度和平均速度。本文提出了一种满足这些要求的新型交通噪声自动分类系统。便携式系统处理两个声道的音频记录,以提供平均速度和车辆数量的信息,这些信息在测量期间分为六类。在对通过音频记录对道路的噪声排放进行良好分类的可能性进行了几次评估之后,结果表明,增加了类内分隔,并引入了一种新颖的基于BSS-PCA的分类器,在最终结果大大改善。

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