access icon free Optic disc segmentation in fundus images using adversarial training

Glaucoma is one of the leading causes of blindness in the world. Optic disc segmentation is an indispensable step for automatic detection of glaucoma with fundus images. In this study, the authors propose an automatic optic disc segmentation approach using adversarial training. The improved ‘U-Net’ is used as the segmentation network to detect optic disc from fundus images, and then the authors add a ‘Patch-level’ adversarial network to enhance higher-order consistency between ground truth and the output from segmentation network, which further boosts the performance of segmentation network. In addition, a new loss function is designed to solve the problem of pixel-level class imbalance in small target region extraction of medical images. All these improvements have effectively increased the segmentation accuracy on hard examples. Authors’ methods achieve Dice coefficient of 0.967 on Drishti-GS dataset and 0.951 on RIM-ONEv3 dataset, which outperform most of the existing methods.

Inspec keywords: eye; biomedical optical imaging; diseases; feature extraction; image enhancement; medical image processing; image segmentation

Other keywords: adversarial training; Drishti-GS dataset; RIM-ONEv3 dataset; automatic optic disc segmentation approach; segmentation accuracy; medical images; patch-level adversarial network; automatic detection; fundus images; segmentation network; glaucoma

Subjects: Optical, image and video signal processing; Biology and medical computing; Optical and laser radiation (medical uses); Optical and laser radiation (biomedical imaging/measurement); Patient diagnostic methods and instrumentation; Computer vision and image processing techniques

http://iet.metastore.ingenta.com/content/journals/10.1049/iet-ipr.2018.5922
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