4.5 Article

Acoustic identification of small pelagic fish species in Chile using support vector machines and neural networks

Journal

FISHERIES RESEARCH
Volume 102, Issue 1-2, Pages 115-122

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.fishres.2009.10.015

Keywords

Neural networks; Support vector machines; Species identification; Hydroacoustic

Categories

Funding

  1. Universidad Diego Portales (Chile)
  2. Instituto de Fomento Pesquero (Chile)
  3. Conicyt (Chile) [1090063]
  4. Chilean Fisheries Research Fund (FIP in Spanish) of the Undersecretary of Fisheries

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Hydroacoustic techniques are a valuable tool for the stock assessments of many fish species. Nonetheless, such techniques are limited by problems of species identification. Several methods and techniques have been used in addressing the problem of acoustic identification species. In this paper, schools of anchovy, common sardine, and jack mackerel were classified using support vector machines (SVMs) and two types of supervised artificial neural networks (multilayer perceptron, MLP; and probabilistic neural networks, PNNs) during acoustic surveys in south-central Chile. Classification was done using a set of descriptors for the schools extracted from the acoustic records. The problem was approached through two multi-class SVMs classifiers: one-species-against-one (1-vs-1) and one-species-against-the-Rest (1-vs-R). Multi-class classifications showed that the MLP neural network and SVM approach performed better than the PNN. The classification rates averaged 79.4% with PNN and 89.5% with MLP and SVM. (C) 2009 Elsevier B.V. All rights reserved.

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