Using machine learning to identify gopher tortoise individuals

Leah M. Knezevich, Mark T. Yamane, and Dr. Michael Hilton

Marine Science and Computer Science Disciplines

Eckerd College, St. Petersburg, Florida 33711

Abstract

Camera traps are increasingly being used as a research tool in behavioral ecology to observe animals in the field. One challenge of continuous data collection by camera traps is that the amount of data produced can be overwhelming to process manually. Machine learning techniques show promise for becoming important tools to meet this challenge in a time- and cost-effective way. Over the past year, we collected images of over 950 social interactions among gopher tortoises from twelve active tortoise burrows at Boyd Hill Nature Preserve in St. Petersburg, Florida. The individual tortoises in each interaction must be identified to comprehensively analyze this data. To automate the identification step, we developed a machine learning algorithm to distinguish between tortoises. It takes a large amount of data to train the machine learning algorithm to recognize patterns. Therefore, we describe how our training dataset was collected and created. We also recount how we trained a Siamese neural network to identify individual tortoises based on their carapace markings in a manner similar to how facial recognition is used on humans. We then incorporated the network into our camera trap analysis software which will be used in future studies to define the social networks of gopher tortoises at Boyd Hill Nature Preserve. This research demonstrates that machine learning can be a powerful tool to aid data processing and analysis in behavioral ecology.

Poster

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For more information email: lmknezev@eckerd.edu

Excellence Award in the Computer Science/Math Section🏆

Eckerd College Undergraduate Research Symposium 2022