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Automatic Music Genre Classification using Convolution Neural Network

机译:使用卷积神经网络自动分类音乐

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Music Genre classification is very important in today's world due to rapid growth in music tracks, both online and offline. In order to have better access to these we need to index them accordingly. Automatic music genre classification is important to obtain music from a large collection. Most of the current music genre classification techniques uses machine learning techniques. In this paper, we present a music dataset which includes ten different genres. A Deep Learning approach is used in order to train and classify the system. Here convolution neural network is used for training and classification. Feature Extraction is the most crucial task for audio analysis. Mel Frequency Cepstral Coefficient (MFCC) is used as a feature vector for sound sample. The proposed system classifies music into various genres by extracting the feature vector. Our results show that the accuracy level of our system is around 76% and it will greatly improve and facilitate automatic classification of music genres.
机译:由于在线和离线音乐曲目的快速增长,音乐流派分类在当今世界中非常重要。为了更好地访问这些文件,我们需要对它们进行相应的索引。自动音乐流派分类对于从大量收藏中获取音乐很重要。当前大多数音乐流派分类技术都使用机器学习技术。在本文中,我们介绍了一个音乐数据集,其中包括十种不同的流派。为了对系统进行训练和分类,使用了深度学习方法。这里将卷积神经网络用于训练和分类。特征提取是音频分析的最关键任务。梅尔频率倒谱系数(MFCC)用作声音样本的特征向量。拟议的系统通过提取特征向量将音乐分为各种流派。我们的结果表明,我们的系统的准确性水平约为76%,它将大大改善并促进音乐流派的自动分类。

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