Sound Event Detection and Context Recognition

نویسندگان

  • Toni Heittola
  • Annamaria Mesaros
  • Tuomas Virtanen
  • Antti Eronen
چکیده

Humans can easily segregate and recognize one sound source from an acoustic mixture, and recognize a certain voice from a busy background which includes other people talking and music. Sound event detection and classification aims to process an acoustic signal and convert it into descriptions of the corresponding sound events present at the scene. This is useful, e.g., for automatic tagging in audio indexing, automatic sound analysis for audio segmentation or audio context classification.

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تاریخ انتشار 2011