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Disc-aware Ensemble Network for Glaucoma Screening from Fundus Image

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arxiv 1805.07549 v1 pith:UYGUL7Y7 submitted 2018-05-19 cs.CV

Disc-aware Ensemble Network for Glaucoma Screening from Fundus Image

classification cs.CV
keywords glaucomascreeningimagedeepdiscfundusnetworkstream
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Glaucoma is a chronic eye disease that leads to irreversible vision loss. Most of the existing automatic screening methods firstly segment the main structure, and subsequently calculate the clinical measurement for detection and screening of glaucoma. However, these measurement-based methods rely heavily on the segmentation accuracy, and ignore various visual features. In this paper, we introduce a deep learning technique to gain additional image-relevant information, and screen glaucoma from the fundus image directly. Specifically, a novel Disc-aware Ensemble Network (DENet) for automatic glaucoma screening is proposed, which integrates the deep hierarchical context of the global fundus image and the local optic disc region. Four deep streams on different levels and modules are respectively considered as global image stream, segmentation-guided network, local disc region stream, and disc polar transformation stream. Finally, the output probabilities of different streams are fused as the final screening result. The experiments on two glaucoma datasets (SCES and new SINDI datasets) show our method outperforms other state-of-the-art algorithms.

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