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A prototype for classification of classical music using neural networks

机译:使用神经网络分类古典音乐的原型

摘要

As a result of recent technological innovations, there has been a tremendous growth in the Electronic Music Distribution industry. In this way, tasks such us automatic music genre classification address new and exciting research challenges. Automatic music genre recognition involves issues like feature extraction and development of classifiers using the obtained features. As for feature extraction, we use features such as the number of zero crossings, loudness, spectral centroid, bandwidth and uniformity. These are statistically manipulated, making a total of 40 features. As for the task of genre modeling, we train a feedforward neural network (FFNN). A taxonomy of subgenres of classical music is used. We consider three classification problems: in the first one, we aim at discriminating between music for flute, piano and violin; in the second problem, we distinguish choral music from opera; finally, in the third one, we aim at discriminating between all five genres. Preliminary results are presented and discussed, which show that the presented methodology may be a good starting point for addressing more challenging tasks, such as using a broader range of musical categories.
机译:由于最近的技术创新,电子音乐发行行业得到了巨大的发展。这样,诸如我们自动音乐流派分类的任务解决了新的和令人兴奋的研究挑战。自动音乐体裁识别涉及诸如特征提取和使用获得的特征的分类器开发之类的问题。对于特征提取,我们使用零交叉数,响度,频谱质心,带宽和均匀性等特征。这些是经过统计处理的,共有40个功能。至于体裁建模的任务,我们训练了前馈神经网络(FFNN)。使用古典音乐子流派的分类法。我们考虑三个分类问题:在第一个分类中,我们旨在区分长笛,钢琴和小提琴的音乐。在第二个问题中,我们将合唱音乐与歌剧区分开来。最后,在第三篇中,我们旨在区分所有五种类型。初步结果进行了介绍和讨论,表明所提出的方法可能是解决更具挑战性任务(例如使用更广泛的音乐类别)的良好起点。

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