Persistent Human–Machine Interfaces for Robotic Arm Control Via Gaze and Eye Direction Tracking

Author:

Ban Seunghyeb12,Lee Yoon Jae23,Yu Ki Jun4,Chang Jae Won5,Kim Jong-Hoon16,Yeo Woon-Hong27ORCID

Affiliation:

1. School of Engineering and Computer Science Washington State University Vancouver WA 98686 USA

2. IEN Center for Human-Centric Interfaces and Engineering at the Institute for Electronics and Nanotechnology Georgia Institute of Technology Atlanta GA 30332 USA

3. School of Electrical and Computer Engineering Georgia Institute of Technology Atlanta GA 30332 USA

4. School of Electrical and Electronic Engineering Yonsei University Seoul 03722 Republic of Korea

5. Department of Otolaryngology Head and Neck Surgery School of Medicine Chungnam National University Hospital Daejeon 35015 Republic of Korea

6. Department of Mechanical Engineering University of Washington Seattle WA 98195 USA

7. George W. Woodruff School of Mechanical Engineering Wallace H. Coulter Department of Biomedical Engineering Parker H. Petit Institute for Bioengineering and Biosciences Institute for Materials Neural Engineering Center Institute for Robotics and Intelligent Machines Georgia Institute of Technology Atlanta GA 30332 USA

Abstract

Recent advances in sensors and electronics have enabled electrooculogram (EOG) detection systems for capturing eye movements. However, EOG signals are susceptible to the sensor's skin‐contact quality, limiting the precise detection of eye angles and gaze. Herein, a two‐camera eye‐tracking system and a data classification method for persistent human–machine interfaces (HMIs) are introduced. Machine‐learning technology is used for a continuous real‐time classification of gaze and eye directions, to precisely control a robotic arm. In addition, a deep‐learning algorithm for classifying eye directions is developed and the pupil center‐corneal reflection method of an eye tracker for gaze tracking is utilized. A supervisory control and data acquisition architecture that can be universally applied to any screen‐based HMI task are used by the system. It is shown in the study that the classification algorithm using deep learning enables exceptional accuracy (99.99%) with the number of actions per command (≥64), the highest performance compared to other HMI systems. Demonstrating real‐time control of a robotic arm captures the unique advantages of the precise eye‐tracking system for playing chess and manipulating dice. Overall, this paper shows the HMI system's potential for remote control of surgery robots, warehouse systems, and construction tools.

Publisher

Wiley

Subject

General Medicine

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