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The Camouflage Machine: Optimising protective colouration using deep learning with genetic algorithms

View ORCID ProfileJ. G. Fennell, View ORCID ProfileL. Talas, View ORCID ProfileR. J. Baddeley, View ORCID ProfileI. C. Cuthill, View ORCID ProfileN. E. Scott-Samuel
doi: https://doi.org/10.1101/2020.01.12.903484
J. G. Fennell
1Bristol Veterinary School, University of Bristol, Bristol, UK
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  • For correspondence: john.fennell@bristol.ac.uk
L. Talas
1Bristol Veterinary School, University of Bristol, Bristol, UK
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R. J. Baddeley
2School of Psychological Science, University of Bristol, Bristol, UK
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I. C. Cuthill
3School of Biological Sciences, University of Bristol, Bristol, UK
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N. E. Scott-Samuel
2School of Psychological Science, University of Bristol, Bristol, UK
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Abstract

The essential problem in visual detection is separating an object from its background. Whether in nature or human conflict, camouflage aims to make the problem harder, while conspicuous signals (e.g. for warning or mate attraction) require the opposite. Our goal is to provide a reliable method for identifying the hardest and easiest to find patterns, for any given environment. The problem is challenging because the parameter space provided by varying natural scenes and potential patterns is vast. Here we successfully solve the problem using deep learning with genetic algorithms and illustrate our solution by identifying appropriate patterns in two environments. To show the generality of our approach, we do so for both trichromatic and dichromatic visual systems. Patterns were validated using human participants; those identified as the best camouflage were significantly harder to find than a widely adopted military camouflage pattern, while those identified as most conspicuous were significantly easier than other patterns. Our method, dubbed the ‘Camouflage Machine’, will be a useful tool for those interested in identifying the most effective patterns in a given context.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted January 14, 2020.
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The Camouflage Machine: Optimising protective colouration using deep learning with genetic algorithms
J. G. Fennell, L. Talas, R. J. Baddeley, I. C. Cuthill, N. E. Scott-Samuel
bioRxiv 2020.01.12.903484; doi: https://doi.org/10.1101/2020.01.12.903484
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The Camouflage Machine: Optimising protective colouration using deep learning with genetic algorithms
J. G. Fennell, L. Talas, R. J. Baddeley, I. C. Cuthill, N. E. Scott-Samuel
bioRxiv 2020.01.12.903484; doi: https://doi.org/10.1101/2020.01.12.903484

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