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Main Authors: Sanchez-Garcia, Melani, Martinez-Cantin, Ruben, Guerrero, Jose J.
Format: Preprint
Published: 2018
Subjects:
Online Access:https://arxiv.org/abs/1809.09607
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author Sanchez-Garcia, Melani
Martinez-Cantin, Ruben
Guerrero, Jose J.
author_facet Sanchez-Garcia, Melani
Martinez-Cantin, Ruben
Guerrero, Jose J.
contents Prosthetic vision is being applied to partially recover the retinal stimulation of visually impaired people. However, the phosphenic images produced by the implants have very limited information bandwidth due to the poor resolution and lack of color or contrast. The ability of object recognition and scene understanding in real environments is severely restricted for prosthetic users. Computer vision can play a key role to overcome the limitations and to optimize the visual information in the simulated prosthetic vision, improving the amount of information that is presented. We present a new approach to build a schematic representation of indoor environments for phosphene images. The proposed method combines a variety of convolutional neural networks for extracting and conveying relevant information about the scene such as structural informative edges of the environment and silhouettes of segmented objects. Experiments were conducted with normal sighted subjects with a Simulated Prosthetic Vision system. The results show good accuracy for object recognition and room identification tasks for indoor scenes using the proposed approach, compared to other image processing methods.
format Preprint
id arxiv_https___arxiv_org_abs_1809_09607
institution arXiv
publishDate 2018
record_format arxiv
spellingShingle Semantic and structural image segmentation for prosthetic vision
Sanchez-Garcia, Melani
Martinez-Cantin, Ruben
Guerrero, Jose J.
Computer Vision and Pattern Recognition
Prosthetic vision is being applied to partially recover the retinal stimulation of visually impaired people. However, the phosphenic images produced by the implants have very limited information bandwidth due to the poor resolution and lack of color or contrast. The ability of object recognition and scene understanding in real environments is severely restricted for prosthetic users. Computer vision can play a key role to overcome the limitations and to optimize the visual information in the simulated prosthetic vision, improving the amount of information that is presented. We present a new approach to build a schematic representation of indoor environments for phosphene images. The proposed method combines a variety of convolutional neural networks for extracting and conveying relevant information about the scene such as structural informative edges of the environment and silhouettes of segmented objects. Experiments were conducted with normal sighted subjects with a Simulated Prosthetic Vision system. The results show good accuracy for object recognition and room identification tasks for indoor scenes using the proposed approach, compared to other image processing methods.
title Semantic and structural image segmentation for prosthetic vision
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/1809.09607