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ICDM
2009
IEEE

Audio Classification of Bird Species: A Statistical Manifold Approach

13 years 10 months ago
Audio Classification of Bird Species: A Statistical Manifold Approach
Our goal is to automatically identify which species of bird is present in an audio recording using supervised learning. Devising effective algorithms for bird species classification is a preliminary step toward extracting useful ecological data from recordings collected in the field. We propose a probabilistic model for audio features within a short interval of time, then derive its Bayes risk-minimizing classifier, and show that it is closely approximated by a nearest-neighbor classifier using Kullback-Leibler divergence to compare histograms of features. We note that feature histograms can be viewed as points on a statistical manifold, and KL divergence approximates geodesic distances defined by the Fisher information metric on such manifolds. Motivated by this fact, we propose the use of another approximation to the Fisher information metric, namely the Hellinger metric. The proposed classifiers achieve over 90% accuracy on a data set containing six species of bird, and outperform ...
Forrest Briggs, Raviv Raich, Xiaoli Z. Fern
Added 18 Feb 2011
Updated 18 Feb 2011
Type Journal
Year 2009
Where ICDM
Authors Forrest Briggs, Raviv Raich, Xiaoli Z. Fern
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