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Community detection in visibility networks: an approach to categorize percussive influence on audio musical signals

机译:可见性网络中的社区检测:一种对音频音乐信号的冲击影响进行分类的方法

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The feature extraction is a very important step in the music audio classification. This task has been performed by renowned descriptors using, in most cases, the time-frequency approach. In this article we propose a descriptor that performs the feature extraction in a set of music audio files labeled in symphonic and percussive music, using parameters calculated within the Euclidean domain. First we calculate the variance fluctuation series of music signal, after we map this series into visibility graphs. At the end each audio track will correspond to a network, where the links are defined by the visibility of variance fluctuations of their respective audio signal. Then, we measure the strength of the partitions of each network in clusters, using calculation of modularity. The results of computation of this parameter in sixty networks showed that percussive and symphonic music can be distinguished and hierarchized on a growing rang, following a direct correlation with modularity.
机译:特征提取是音乐音频分类中非常重要的一步。在大多数情况下,此任务由著名的描述符使用时频方法执行。在本文中,我们提出了一个描述符,该描述符使用在欧几里得域中计算出的参数,在以交响乐和打击乐标记的音乐音频文件集中执行特征提取。首先,我们将音乐信号的方差波动序列映射到可见度图中,然后计算该序列。最后,每个音频轨道将对应于一个网络,其中的链接由其相应音频信号的方差波动的可见性定义。然后,我们使用模块化计算来测量群集中每个网络分区的强度。在60个网络中对该参数进行计算的结果表明,在与模块化直接相关之后,打击乐和交响音乐可以在不断扩大的范围内加以区分和分级。

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