Identification of cichlid fishes from Lake Malawi using computer vision.

The explosively radiating evolution of cichlid fishes of Lake Malawi has yielded an amazing number of haplochromine species estimated as many as 500 to 800 with a surprising degree of diversity not only in color and stripe pattern but also in the shape of jaw and body among them. As these morphologi...

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Main Authors: Deokjin Joo, Ye-seul Kwan, Jongwoo Song, Catarina Pinho, Jody Hey, Yong-Jin Won
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3808401?pdf=render
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spelling doaj-ab7db44e17ba44e795bb667f43b9a2dd2020-11-25T01:13:24ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-01810e7768610.1371/journal.pone.0077686Identification of cichlid fishes from Lake Malawi using computer vision.Deokjin JooYe-seul KwanJongwoo SongCatarina PinhoJody HeyYong-Jin WonThe explosively radiating evolution of cichlid fishes of Lake Malawi has yielded an amazing number of haplochromine species estimated as many as 500 to 800 with a surprising degree of diversity not only in color and stripe pattern but also in the shape of jaw and body among them. As these morphological diversities have been a central subject of adaptive speciation and taxonomic classification, such high diversity could serve as a foundation for automation of species identification of cichlids.Here we demonstrate a method for automatic classification of the Lake Malawi cichlids based on computer vision and geometric morphometrics. For this end we developed a pipeline that integrates multiple image processing tools to automatically extract informative features of color and stripe patterns from a large set of photographic images of wild cichlids. The extracted information was evaluated by statistical classifiers Support Vector Machine and Random Forests. Both classifiers performed better when body shape information was added to the feature of color and stripe. Besides the coloration and stripe pattern, body shape variables boosted the accuracy of classification by about 10%. The programs were able to classify 594 live cichlid individuals belonging to 12 different classes (species and sexes) with an average accuracy of 78%, contrasting to a mere 42% success rate by human eyes. The variables that contributed most to the accuracy were body height and the hue of the most frequent color.Computer vision showed a notable performance in extracting information from the color and stripe patterns of Lake Malawi cichlids although the information was not enough for errorless species identification. Our results indicate that there appears an unavoidable difficulty in automatic species identification of cichlid fishes, which may arise from short divergence times and gene flow between closely related species.http://europepmc.org/articles/PMC3808401?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Deokjin Joo
Ye-seul Kwan
Jongwoo Song
Catarina Pinho
Jody Hey
Yong-Jin Won
spellingShingle Deokjin Joo
Ye-seul Kwan
Jongwoo Song
Catarina Pinho
Jody Hey
Yong-Jin Won
Identification of cichlid fishes from Lake Malawi using computer vision.
PLoS ONE
author_facet Deokjin Joo
Ye-seul Kwan
Jongwoo Song
Catarina Pinho
Jody Hey
Yong-Jin Won
author_sort Deokjin Joo
title Identification of cichlid fishes from Lake Malawi using computer vision.
title_short Identification of cichlid fishes from Lake Malawi using computer vision.
title_full Identification of cichlid fishes from Lake Malawi using computer vision.
title_fullStr Identification of cichlid fishes from Lake Malawi using computer vision.
title_full_unstemmed Identification of cichlid fishes from Lake Malawi using computer vision.
title_sort identification of cichlid fishes from lake malawi using computer vision.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description The explosively radiating evolution of cichlid fishes of Lake Malawi has yielded an amazing number of haplochromine species estimated as many as 500 to 800 with a surprising degree of diversity not only in color and stripe pattern but also in the shape of jaw and body among them. As these morphological diversities have been a central subject of adaptive speciation and taxonomic classification, such high diversity could serve as a foundation for automation of species identification of cichlids.Here we demonstrate a method for automatic classification of the Lake Malawi cichlids based on computer vision and geometric morphometrics. For this end we developed a pipeline that integrates multiple image processing tools to automatically extract informative features of color and stripe patterns from a large set of photographic images of wild cichlids. The extracted information was evaluated by statistical classifiers Support Vector Machine and Random Forests. Both classifiers performed better when body shape information was added to the feature of color and stripe. Besides the coloration and stripe pattern, body shape variables boosted the accuracy of classification by about 10%. The programs were able to classify 594 live cichlid individuals belonging to 12 different classes (species and sexes) with an average accuracy of 78%, contrasting to a mere 42% success rate by human eyes. The variables that contributed most to the accuracy were body height and the hue of the most frequent color.Computer vision showed a notable performance in extracting information from the color and stripe patterns of Lake Malawi cichlids although the information was not enough for errorless species identification. Our results indicate that there appears an unavoidable difficulty in automatic species identification of cichlid fishes, which may arise from short divergence times and gene flow between closely related species.
url http://europepmc.org/articles/PMC3808401?pdf=render
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