A System for Accurate Tracking and Video Recordings of Rodent Eye Movements using Convolutional Neural Networks for Biomedical Image Segmentation
Isha Puri, David Cox

TL;DR
This paper introduces a novel convolutional neural network-based system for precise, noninvasive tracking of rodent eye movements, addressing unique challenges posed by rodent eye characteristics for neuroscience research.
Contribution
It presents the first highly accurate, adaptable deep learning model specifically designed for segmenting rodent eye images, improving gaze tracking accuracy in biomedical applications.
Findings
Achieved state-of-the-art accuracy in rodent eye segmentation
Developed a flexible model adaptable to variability in eye parameters
Integrated the system into an automated infrared video recording setup
Abstract
Research in neuroscience and vision science relies heavily on careful measurements of animal subject's gaze direction. Rodents are the most widely studied animal subjects for such research because of their economic advantage and hardiness. Recently, video based eye trackers that use image processing techniques have become a popular option for gaze tracking because they are easy to use and are completely noninvasive. Although significant progress has been made in improving the accuracy and robustness of eye tracking algorithms, unfortunately, almost all of the techniques have focused on human eyes, which does not account for the unique characteristics of the rodent eye images, e.g., variability in eye parameters, abundance of surrounding hair, and their small size. To overcome these unique challenges, this work presents a flexible, robust, and highly accurate model for pupil and corneal…
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