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Retinal Image Quality Classification Using Neurobiological Models of the Human Visual System
2016
Proceedings of the Ophthalmic Medical Image Analysis Third International Workshop
unpublished
Retinal image quality assessment (IQA) algorithms use different hand crafted features without considering the important role of the human visual system (HVS). We solve the IQA problem using the principles behind the working of the HVS. Unsupervised information from local saliency maps and supervised information from trained convolutional neural networks (CNNs) are combined to make a final decision on image quality. A novel algorithm is proposed that calculates saliency values for every image
doi:10.17077/omia.1052
fatcat:eqt3e5godren7cszlbstavmcse