• Corpus ID: 84840620

Audio Event Classification Using Deep Learning Methods

@inproceedings{Xu2018AudioEC,
  title={Audio Event Classification Using Deep Learning Methods},
  author={Zhicun Xu},
  year={2018}
}
  • Zhicun Xu
  • Published 10 December 2018
  • Computer Science
ii 
Convolutional Neural Network based Audio Event Classification
TLDR
This proposed method classified audio events with the accuracy of 78.1% for the UrbanSound8K and BBC Sound FX dataset, and shows 8.17% relative improvement to the DNN-based classification method.
Deep learning for spoken language identification
TLDR
Aalto University, P.O. Box 11000, FI-00076 Aalto www.aalto.fiDeep learning for spoken language identification School School of Science Master’s programme Computer, Communication and Information Sciences Major Computer Science Code SCI3042.

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