Exploring convolutional, recurrent, and hybrid deep neural networks for speech and music detection in a large audio dataset

Volume: 2019, Issue: 1
Published: Jun 17, 2019
Abstract
Audio signals represent a wide diversity of acoustic events, from background environmental noise to spoken communication. Machine learning models such as neural networks have already been proposed for audio signal modeling, where recurrent structures can take advantage of temporal dependencies. This work aims to study the implementation of several neural network-based systems for speech and music event detection over a collection of 77,937...
Paper Details
Title
Exploring convolutional, recurrent, and hybrid deep neural networks for speech and music detection in a large audio dataset
Published Date
Jun 17, 2019
Volume
2019
Issue
1
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