SuperLectures.com

TIME-FREQUENCY SEGMENTATION OF BIRD SONG IN NOISY ACOUSTIC ENVIRONMENTS

Full Paper at IEEE Xplore

Machine Learning Methods and Applications

Přednášející: Raviv Raich, Autoři: Lawrence Neal, Forrest Briggs, Raviv Raich, Xiaoli Fern, Oregon State University, United States

Recent work in machine learning considers the problem of identifying bird species from an audio recording. Most methods require segmentation to isolate each syllable of bird call in input audio. Energy-based time-domain segmentation has been successfully applied to low-noise, single-bird recordings. However, audio from automated field recorders contains too much noise for such methods, so a more robust segmentation method is required. We propose a supervised time-frequency audio segmentation method using a Random Forest classifier, to extract syllables of bird call from a noisy signal. When applied to a test data set of 625 field-collected audio segments, our method isolates 93.6% of the acoustic energy of bird song with a false positive rate of 8.6%, outperforming energy thresholding.


  Přepis řeči

|

  Komentáře

Please sign in to post your comment!

  Informace o přednášce

Nahráno: 2011-05-27 14:45 - 15:05, Club H
Přidáno: 21. 6. 2011 19:03
Počet zhlédnutí: 26
Rozlišení videa: 1024x576 px, 512x288 px
Délka videa: 0:18:12
Audio stopa: MP3 [6.14 MB], 0:18:12