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Automatic Gaze Classification for Aviators: Using Multi-task Convolutional Networks as a Proxy for Flight Instructor Observation

Justin Wilson et al · Embry-Riddle Aeronautical University · 2020

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3D Printing Technology in Aerospace Industry – A Review

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<p>In this work, we investigate how flight instructors observe aviator scan patterns and assign quality to an aviator's gaze. We first establish the reliability of instructors to assign similar quality to an aviator's scan patterns, and then investigate methods to automate this quality using machine learning. In particular, we focus on the classification of gaze for aviators in a mixed-reality flight simulation. We create and evaluate two machine learning models for classifying gaze quality of aviators: a task-agnostic model and a multi-task model. Both models use deep convolutional neural networks to classify the quality of pilot gaze patterns for 40 pilots, operators, and novices, as compared to visual inspection by three experienced flight instructors. Our multi-task model can automate the process of gaze inspection with an average accuracy of over 93.0% for three separate flight tasks. Our approach could assist existing flight instructors to provide feedback to learners, or it could open the door to more automated feedback for pilots learning to carry out different maneuvers.</p>

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APA 7

al, J. W. E. (2020). Automatic Gaze Classification for Aviators: Using Multi-task Convolutional Networks as a Proxy for Flight Instructor Observation. https://doi.org/10.15394/ijaaa.2020.1499

MLA

al, Justin Wilson et. "Automatic Gaze Classification for Aviators: Using Multi-task Convolutional Networks as a Proxy for Flight Instructor Observation." 2020. https://doi.org/10.15394/ijaaa.2020.1499.

Chicago

al, Justin Wilson et. 2020. "Automatic Gaze Classification for Aviators: Using Multi-task Convolutional Networks as a Proxy for Flight Instructor Observation.". https://doi.org/10.15394/ijaaa.2020.1499.

Harvard

al, J. W. E. 2020, Automatic Gaze Classification for Aviators: Using Multi-task Convolutional Networks as a Proxy for Flight Instructor Observation, Embry-Riddle Aeronautical University, available at: https://doi.org/10.15394/ijaaa.2020.1499 [Accessed 24 Jun. 2026].

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Título
Automatic Gaze Classification for Aviators: Using Multi-task Convolutional Networks as a Proxy for Flight Instructor Observation
Autor / colaboradores
Justin Wilson et al
Editorial
Embry-Riddle Aeronautical University
Año de publicación
2020
ISSN
2374-6793
ISSN
2374-6793
Idioma
eng

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