IRLGSDASJan 15, 2020

Deep Learning for MIR Tutorial

arXiv:2001.05266v14 citations
AI Analysis

This is an incremental tutorial aimed at researchers and practitioners in MIR and audio retrieval to disseminate existing knowledge.

The authors proposed an introductory tutorial on deep learning for Music Information Retrieval (MIR), covering neural networks and specific approaches like Convolutional and Recurrent Neural Networks, but did not report any experimental results or concrete numbers.

Deep Learning has become state of the art in visual computing and continuously emerges into the Music Information Retrieval (MIR) and audio retrieval domain. In order to bring attention to this topic we propose an introductory tutorial on deep learning for MIR. Besides a general introduction to neural networks, the proposed tutorial covers a wide range of MIR relevant deep learning approaches. \textbf{Convolutional Neural Networks} are currently a de-facto standard for deep learning based audio retrieval. \textbf{Recurrent Neural Networks} have proven to be effective in onset detection tasks such as beat or audio-event detection. \textbf{Siamese Networks} have been shown effective in learning audio representations and distance functions specific for music similarity retrieval. We will incorporate both academic and industrial points of view into the tutorial. Accompanying the tutorial, we will create a Github repository for the content presented at the tutorial as well as references to state of the art work and literature for further reading. This repository will remain public after the conference.

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