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Sruthi Sundharram final.pdf (2.78 MB)

MOUSE SOCIAL BEHAVIOR CLASSIFICATION USING SELF-SUPERVISED LEARNING TECHNIQUES

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posted on 2024-04-27, 22:51 authored by Sruthi SundharramSruthi Sundharram

Traditional methods of behavior classification on videos of mice often rely on manually annotated datasets, which can be labor-intensive and resource-demanding to create. This research aims to address the challenges of behavior classification in mouse studies by leveraging an algorithmic framework employing self-supervised learning techniques capable of analyzing unlabeled datasets. This research seeks to develop a novel approach that eliminates the need for extensive manual annotation, making behavioral analysis more accessible and cost-effective for researchers, especially those in laboratories with limited access to annotated datasets.

History

Degree Type

  • Master of Science

Department

  • Computer Science

Campus location

  • Fort Wayne

Advisor/Supervisor/Committee Chair

Jin Soung Yoo

Additional Committee Member 2

Amal Khalifa

Additional Committee Member 3

Jonathan Rusert

Additional Committee Member 4

Mohammadreza Hajiarbabi

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