Multi-Channel Audio Source Separation Using Azimuth-Frequency Analysis and Convolutional Neural Network

J. M. Moon, C. Chun, Jun Ho Kim, H. Kim, Tae Kim
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引用次数: 1

Abstract

Since MPEG-H supports not only channel-based but also object-based audio content, there is a need for a sound source separation technique that converts channel-based to object-based audio. Among the various sound source separation techniques, azimuth-frequency (AF) based sound source separation has been proposed for converting channel-based audio to object-based audio. Unfortunately, it is difficult to set the optimal azimuth and width using this technique. In this paper, we propose a method to determine the optimal azimuth and width based on a convolutional neural network (CNN) classifier. First, depending on numerous azimuths and widths, different sets of audio signals are separated. After that, each audio set is categorized into a specific audio class using the CNN classifier. Then, in order to separate a desired audio signal, the azimuth and width with the highest similarity for a given class are selected. The performance of the CNN classifier is evaluated in terms of separation accuracy and objective measures such as signal-to-distortion ratio (SDR), signal-to-interference ratio (SIR), and signal-to-artifacts ratio (SAR). Consequently, the proposed method provides higher SDR, SAR, SIR, and separation accuracy than a minimum variance distortionless response (MVDR) beamformer as well as a method that only uses AF analysis.
基于方位频率分析和卷积神经网络的多声道音频源分离
由于MPEG-H不仅支持基于声道的音频内容,也支持基于对象的音频内容,因此需要一种声源分离技术,将基于声道的音频转换为基于对象的音频。在各种声源分离技术中,基于方位角频率(AF)的声源分离技术被提出用于将基于通道的音频转换为基于对象的音频。不幸的是,使用这种技术很难设置最佳的方位角和宽度。在本文中,我们提出了一种基于卷积神经网络(CNN)分类器来确定最佳方位和宽度的方法。首先,根据许多方位角和宽度,分离不同的音频信号集。之后,使用CNN分类器将每个音频集分类到特定的音频类中。然后,为了分离期望的音频信号,选择给定类中相似度最高的方位角和宽度。CNN分类器的性能是根据分离精度和客观指标(如信号失真比(SDR)、信号干扰比(SIR)和信号伪像比(SAR))来评估的。因此,所提出的方法比最小方差无失真响应(MVDR)波束形成器以及仅使用AF分析的方法提供更高的SDR、SAR、SIR和分离精度。
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