Leveraging behavioral variability for robust classification of firefly flash signals
ORAL
Abstract
Swarms of fireflies flash in patterns to advertise their presence to potential mates, resulting in dazzling light displays. However, light pollution, climate change, and other factors are threatening firefly populations worldwide. This reality has kickstarted conservation efforts rooted in a quantitative understanding of firefly signaling behavior. Here, we present a high-throughput analysis pipeline to extract trajectories and flash patterns of individual fireflies recorded in the field. We observe significant behavioral variability within species, which mandates a characterization of firefly flash behavior that extends beyond the prior practice of representing a species by a single discrete pattern. We then train a recurrent neural network using flash pattern data to accurately classify firefly species. Our computational methods enable an extensive characterization of how signaling behaviors vary spatially and temporally across firefly populations and species around the globe.
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Presenters
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Chantal Nguyen
University of Colorado, Boulder, University of Colorado Boulder
Authors
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Chantal Nguyen
University of Colorado, Boulder, University of Colorado Boulder
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Owen Martin
University of Colorado, Boulder
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Chantal Nguyen
University of Colorado, Boulder, University of Colorado Boulder
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Raphael Sarfati
University of Colorado, Boulder
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Murad Chowdhury
University of Colorado, Boulder
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Michael Iuzzolino
University of Colorado, Boulder
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Dieu My Nguyen
University of Colorado, Boulder
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Ryan Layer
University of Colorado, Boulder
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Orit Peleg
University of Colorado Boulder