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Automated Strabismus Detection for Telemedicine Applications

Authors :
Lu, Jiewei
Fan, Zhun
Zheng, Ce
Feng, Jingan
Huang, Longtao
Li, Wenji
Goodman, Erik D.
Publication Year :
2018

Abstract

Strabismus is one of the most influential ophthalmologic diseases in human's life. Timely detection of strabismus contributes to its prognosis and treatment. Telemedicine, which has great potential to alleviate the growing demand of the diagnosis of ophthalmologic diseases, is an effective method to achieve timely strabismus detection. In this paper, a tele strabismus dataset is established by the ophthalmologists. Then an end-to-end framework named as RF-CNN is proposed to achieve automated strabismus detection on the established tele strabismus dataset. RF-CNN first performs eye region segmentation on each individual image, and further classifies the segmented eye regions with deep neural networks. The experimental results on the established tele strabismus dataset demonstrates that the proposed RF-CNN can have a good performance on automated strabismus detection for telemedicine application. Code is made publicly available at: https://github.com/jieWeiLu/Strabismus-Detection-for-Telemedicine-Application.<br />Comment: 8 page, 10 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1809.02940
Document Type :
Working Paper