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Main Authors: Hu, Yan, Gong, Mingdao, Qiu, Zhongxi, Liu, Jiabao, Shen, Hongli, Yuan, Mingzhen, Zhang, Xiaoqing, Li, Heng, Lu, Hai, Liu, Jiang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.02800
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author Hu, Yan
Gong, Mingdao
Qiu, Zhongxi
Liu, Jiabao
Shen, Hongli
Yuan, Mingzhen
Zhang, Xiaoqing
Li, Heng
Lu, Hai
Liu, Jiang
author_facet Hu, Yan
Gong, Mingdao
Qiu, Zhongxi
Liu, Jiabao
Shen, Hongli
Yuan, Mingzhen
Zhang, Xiaoqing
Li, Heng
Lu, Hai
Liu, Jiang
contents Retinal image registration is vital for diagnostic therapeutic applications within the field of ophthalmology. Existing public datasets, focusing on adult retinal pathologies with high-quality images, have limited number of image pairs and neglect clinical challenges. To address this gap, we introduce COph100, a novel and challenging dataset known as the Comprehensive Ophthalmology Retinal Image Registration dataset for infants with a wide range of image quality issues constituting the public "RIDIRP" database. COph100 consists of 100 eyes, each with 2 to 9 examination sessions, amounting to a total of 491 image pairs carefully selected from the publicly available dataset. We manually labeled the corresponding ground truth image points and provided automatic vessel segmentation masks for each image. We have assessed COph100 in terms of image quality and registration outcomes using state-of-the-art algorithms. This resource enables a robust comparison of retinal registration methodologies and aids in the analysis of disease progression in infants, thereby deepening our understanding of pediatric ophthalmic conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2501_02800
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle COph100: A comprehensive fundus image registration dataset from infants constituting the "RIDIRP" database
Hu, Yan
Gong, Mingdao
Qiu, Zhongxi
Liu, Jiabao
Shen, Hongli
Yuan, Mingzhen
Zhang, Xiaoqing
Li, Heng
Lu, Hai
Liu, Jiang
Computer Vision and Pattern Recognition
Computational Engineering, Finance, and Science
Retinal image registration is vital for diagnostic therapeutic applications within the field of ophthalmology. Existing public datasets, focusing on adult retinal pathologies with high-quality images, have limited number of image pairs and neglect clinical challenges. To address this gap, we introduce COph100, a novel and challenging dataset known as the Comprehensive Ophthalmology Retinal Image Registration dataset for infants with a wide range of image quality issues constituting the public "RIDIRP" database. COph100 consists of 100 eyes, each with 2 to 9 examination sessions, amounting to a total of 491 image pairs carefully selected from the publicly available dataset. We manually labeled the corresponding ground truth image points and provided automatic vessel segmentation masks for each image. We have assessed COph100 in terms of image quality and registration outcomes using state-of-the-art algorithms. This resource enables a robust comparison of retinal registration methodologies and aids in the analysis of disease progression in infants, thereby deepening our understanding of pediatric ophthalmic conditions.
title COph100: A comprehensive fundus image registration dataset from infants constituting the "RIDIRP" database
topic Computer Vision and Pattern Recognition
Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2501.02800