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A Study on Broadcast Networks for Music Genre Classification

Ahmed Heakl, Abdelrahman Mohamed Abdelgawad, Victor Parque

20222022 International Joint Conference on Neural Networks (IJCNN)14 citationsDOI

Abstract

Due to the increased demand for music streaming/recommender services and the recent developments of music information retrieval frameworks, Music Genre Classification (MGC) has attracted the community's attention. However, convolutional-based approaches are known to lack the ability to efficiently encode and localize temporal features. In this paper, we study the broadcast-based neural networks aiming to improve the localization and generalizability under a small set of parameters (about 180k) and investigate twelve variants of broadcast networks discussing the effect of block configuration, pooling method, activation function, normalization mechanism, label smoothing, channel interdependency, LSTM block inclusion, and variants of inception schemes. Our computational experiments using relevant datasets such as GTZAN, Extended Ballroom, HOMBURG, and Free Music Archive (FMA) show the state-of-the-art classification accuracies in MGC. Our approach offers insights and the potential to enable compact and generalizable broadcast networks for music classification.

Topics & Concepts

Computer sciencePoolingMusic information retrievalNormalization (sociology)Discriminative modelENCODEArtificial intelligenceRendering (computer graphics)SmoothingSet (abstract data type)Machine learningInformation retrievalGeneBiochemistrySociologyArtVisual artsAnthropologyComputer visionProgramming languageChemistryMusicalMusic and Audio ProcessingSpeech and Audio ProcessingMusic Technology and Sound Studies
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