2022
DOI: 10.1142/s0219519422400292
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Id-Net:inception Deconvolutional Neural Network for Multi-Class Classification in Retinal Fundus Image

Abstract: Micro-aneurysms, hemorrhages, and hard exudates are the early lesions of diabetic retinopathy, with micro-aneurysms and small hemorrhages appearing as small and multi-size objects in the retinal fundus image. Though it is essentially a promising technique for object classification in images, the deep learning method needs specific investigation for dealing with retinal fundus images. To this, we propose an inception deconvolutional network, dubbed ID-Net, for multi-class object classification. The ID-Net consi… Show more

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