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Bottom-up Broadcast Neural Network For Music Genre Classification

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arxiv 1901.08928 v1 pith:MKKGWJEP submitted 2019-01-24 cs.SD cs.AIeess.AS

Bottom-up Broadcast Neural Network For Music Genre Classification

classification cs.SD cs.AIeess.AS
keywords genreinformationmusicneuralproposedarchitectureballroombeen
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Music genre recognition based on visual representation has been successfully explored over the last years. Recently, there has been increasing interest in attempting convolutional neural networks (CNNs) to achieve the task. However, most of existing methods employ the mature CNN structures proposed in image recognition without any modification, which results in the learning features that are not adequate for music genre classification. Faced with the challenge of this issue, we fully exploit the low-level information from spectrograms of audios and develop a novel CNN architecture in this paper. The proposed CNN architecture takes the long contextual information into considerations, which transfers more suitable information for the decision-making layer. Various experiments on several benchmark datasets, including GTZAN, Ballroom, and Extended Ballroom, have verified the excellent performances of the proposed neural network. Codes and model will be available at "ttps://github.com/CaifengLiu/music-genre-classification".

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