Write Alphabet, Words and Sentences with your eyes.

Overview

The-Next-Gen-AI-Eye-Writer

The Eye tracking Technique has become one of the most popular techniques within the human and computer interaction era, this is especially important research for people which have difficulty with speech and movement disabilities. The primary function of this technology is based on a device that tracks the movement of the eye to identify a position or scan a display. Suitable devices for eye movement can then be integrated in accordance with the requirements of the organization. Currently, eye tracing devices are becoming increasingly cheaper which make them an interesting resource for research. Although numerous studies have been conducted involving applications of eye tracking with a low-cost device, few studies have compared the actual eye tracking systems themselves.

Most of the people can read, write, listen, and do anything because their body communicates with the mind. So mind controls every moment of the body. But some people can’t do this because their body may not communicate with their brain, which means the brain is active and the body is in-active. This kind of people can think but not implement their thoughts. So Now, By using an “Eye-Writer” they can express their thoughts.

The Eye-Writer Project uses Artificial Intelligence, OpenCV, Python, Python Frameworks, dlib, Neural Networks and Computer Vision. The Motive of the Project is to give voice to the voiceless. If a person is not able to write and talk but able to read and visualise things then this project would definitely help them in communicating with his/her loved ones via reducing the communication gap by writing alphabet, words and sentences with his/her eyes.

Output Screen

Owner
Rohan Kasabe
Lifelong learner.
Rohan Kasabe
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