Abstract / truncated to 115 words (read the full abstract)

It takes more time to think of a silent scene, action or event than finding one that emanates sound. Not only speaking or playing music but almost everything that happens is accompanied with or results in one or more sounds mixed together. This makes acoustic event detection (AED) one of the most researched topics in audio signal processing nowadays and it will probably not see a decline anywhere in the near future. This is due to the thirst for understanding and digitally abstracting more and more events in life via the enormous amount of recorded audio through thousands of applications in our daily routine. But it is also a result of two intrinsic properties of ... toggle 4 keywords

audio processing music information retrieval machine learning evaluation

Information

Author
Mina Mounir
Institution
KU Leuven, ESAT STADIUS
Supervisors
Publication Year
2020
Upload Date
Nov. 26, 2020

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