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Supervised Chorus Detection for Popular Music Using Convolutional Neural Network and Multi-Task Learning

Ju-Chiang Wang, Jordan B. L. Smith, Jitong Chen, Xuchen Song, Yuxuan Wang

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Abstract

This paper presents a novel supervised approach to detecting the chorus segments in popular music. Traditional approaches to this task are mostly unsupervised, with pipelines designed to target some quality that is assumed to define "chorusness," which usually means seeking the loudest or most frequently repeated sections. We propose to use a convolutional neural network with a multi-task learning objective, which simultaneously fits two temporal activation curves: one indicating "chorusness" as a function of time, and the other the location of the boundaries. We also propose a post-processing method that jointly takes into account the chorus and boundary predictions to produce binary output. In experiments using three datasets, we compare our system to a set of public implementations of other segmentation and chorus-detection algorithms, and find our approach performs significantly better.

Topics & Concepts

ChorusComputer scienceConvolutional neural networkTask (project management)Artificial intelligenceBinary classificationSet (abstract data type)Machine learningArtificial neural networkBinary numberPattern recognition (psychology)SegmentationBoundary (topology)Speech recognitionMathematicsLiteratureSupport vector machineMathematical analysisManagementEconomicsProgramming languageArtArithmeticMusic and Audio ProcessingMusic Technology and Sound StudiesNeuroscience and Music Perception
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