Using Correlation Patterns in Schooling Behavior to Distinguish Tetra Species
POSTER
Abstract
Fish species are usually identified morphologically or genetically, but group-level kinematics may also provide diagnostic signatures. The advancement in automated tracking technology provides an opportunity to distinguish between collective behavioral signatures and to use those signatures to classify distinct species of schooling fish. In this work, we analyzed videos of schooling behaviors of three tetra species: Black neons, Buenos Aires, and Pristella tetras. We found that Black neon tetras have a higher polarization order parameter, shorter distance to their neighbors, and higher swimming speed than the other two species. We further found that the velocity correlation function of Buenos Aires tetras decays near exponentially up to very large distances while those of the other two species decay near linearly. Our findings show that simple correlation-based metrics can separate species and provide parameters to model these fish species.
Presenters
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Ashley Hayward
Ohio Wesleyan University
Authors
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Ashley Hayward
Ohio Wesleyan University
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Alyssa Chan
University of Southern California
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Haotian Hang
University of Southern California
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Nathan Swanson
University of California, Irvine
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Christopher Martinez
University of California, Irvine
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Matthew McHenry
University of California, Irvine
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Hanliang Guo
Ohio Wesleyan University
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Eva Kanso
National Science Foundation (NSF), University of Southern California