Clinical Progress and Optimization of Information Processing in Artificial Visual Prostheses

Sensors (Basel). 2022 Aug 30;22(17):6544. doi: 10.3390/s22176544.

Abstract

Visual prostheses, used to assist in restoring functional vision to the visually impaired, convert captured external images into corresponding electrical stimulation patterns that are stimulated by implanted microelectrodes to induce phosphenes and eventually visual perception. Detecting and providing useful visual information to the prosthesis wearer under limited artificial vision has been an important concern in the field of visual prosthesis. Along with the development of prosthetic device design and stimulus encoding methods, researchers have explored the possibility of the application of computer vision by simulating visual perception under prosthetic vision. Effective image processing in computer vision is performed to optimize artificial visual information and improve the ability to restore various important visual functions in implant recipients, allowing them to better achieve their daily demands. This paper first reviews the recent clinical implantation of different types of visual prostheses, summarizes the artificial visual perception of implant recipients, and especially focuses on its irregularities, such as dropout and distorted phosphenes. Then, the important aspects of computer vision in the optimization of visual information processing are reviewed, and the possibilities and shortcomings of these solutions are discussed. Ultimately, the development direction and emphasis issues for improving the performance of visual prosthesis devices are summarized.

Keywords: artificial vision; computer vision; dropout and distorted phosphenes; optimization strategy; visual prosthesis.

Publication types

  • Review

MeSH terms

  • Image Processing, Computer-Assisted / methods
  • Phosphenes
  • Vision, Ocular
  • Visual Perception / physiology
  • Visual Prosthesis*