CVJan 30, 2021

Deep Learning--Based Scene Simplification for Bionic Vision

arXiv:2102.00297v149 citations
Originality Synthesis-oriented
AI Analysis

This work addresses improving prosthetic vision utility for people blinded by retinal degenerative diseases, representing an incremental advance by applying existing computer vision methods to a specific domain.

The researchers tackled the problem of low-quality prosthetic vision for retinal degenerative diseases by combining deep learning scene simplification with a computational retina model, showing that object segmentation outperforms saliency and depth estimation in supporting scene understanding for simulated patients.

Retinal degenerative diseases cause profound visual impairment in more than 10 million people worldwide, and retinal prostheses are being developed to restore vision to these individuals. Analogous to cochlear implants, these devices electrically stimulate surviving retinal cells to evoke visual percepts (phosphenes). However, the quality of current prosthetic vision is still rudimentary. Rather than aiming to restore "natural" vision, there is potential merit in borrowing state-of-the-art computer vision algorithms as image processing techniques to maximize the usefulness of prosthetic vision. Here we combine deep learning--based scene simplification strategies with a psychophysically validated computational model of the retina to generate realistic predictions of simulated prosthetic vision, and measure their ability to support scene understanding of sighted subjects (virtual patients) in a variety of outdoor scenarios. We show that object segmentation may better support scene understanding than models based on visual saliency and monocular depth estimation. In addition, we highlight the importance of basing theoretical predictions on biologically realistic models of phosphene shape. Overall, this work has the potential to drastically improve the utility of prosthetic vision for people blinded from retinal degenerative diseases.

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