International Journal of Advanced Technology and Engineering Exploration (IJATEE) ISSN (P): 2394-5443 ISSN (O): 2394-7454 Vol - 5, Issue - 46, September 2018
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Vision substitution using audio-tactual sensation

Dinesh R. Damodar, Umang V. Suthar and Hemang D. Solanki

Abstract

In the contemporary era, technologies available for blind individuals can assist them in narrow and short range while they lack amenities to feel, observe and identify long range objects. Hence they are still in trouble of conventional method using blind stick, laser cane, vibrators etc. The proposed technique implement camera to determine shape and size of object, pose of person by extracting its dimensions using object detection and pose estimation method, converting visual details in auditory and feed in auditory output simultaneously with vibration matrix for accurate determining of object with its location for assisting in terms of far sight vision. In short developing a neural network based artificial intelligence unit which can continue adding up significant information of new vectors, images and speak out to the user whenever he/she need. It gives accurate and precise control to become more and more independent every day with practice and guidance.

Keyword

Vision substitution, Vision augmentation, Neural networks, Artificial intelligence, Image recognition, Pose estimation, Electro-oculography.

Cite this article

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