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Automatic Detection and Recognition of Tonal Bird Sounds in Noisy Environments. P. Jancovic and M. Kokuer EURASIP Journal on Advances in Signal Processing Volume 2011. Presenter Chia -Cheng Chen. Outline. Introduction Detection of Bird Sounds Experimental Results Conclusions.
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Automatic Detection and Recognition of Tonal Bird Sounds in Noisy Environments P. Jancovicand M. Kokuer EURASIP Journal on Advances in Signal Processing Volume 2011 • Presenter Chia-ChengChen
Outline Introduction Detection of Bird Sounds Experimental Results Conclusions
Introduction • Bird vocalisation is usually considered to be composed of calls and songs, which consist of a single syllable or a series of syllables. • Modellingof the bird sounds • Tonal-based feature • Gaussian mixture models
Detection of Bird Sounds • A method for the detection of tonal regions of bird sounds • Spectral-level • Frame-level
Detection of Bird Sounds(cont.) • Spectral-level • Hamming window • Sine-Distance • Postprocessing of the Sine-Distances
Detection of Bird Sounds(cont.) • Sine-Distance • Postprocessing of the Sine-Distances • 2D median filter of size 15 × 3
Detection of Bird Sounds(cont.) Figure 1: Waveform (a), spectrogram (b), and the corresponding sine-distance values
Detection of Bird Sounds(cont.) • Frame-level • Comparing the results for the frame length • Frame length 32 、64 、128
Detection of Bird Sounds(cont.) • Frame-level experimental results • Length 128 lowest performance • Length 64 at lower SNRs • Length 32 at higher SNRs
Conclusions MFCC features provide extremely low recognition performance even in mild noisy conditions at the SNR of 10 dB. Employing a multiple-hypothesis recognition approach.