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Use of uncertainty quantification as a surrogate for layer segmentation error in Stargardt disease retinal OCT images
Conference paper   Peer reviewed

Use of uncertainty quantification as a surrogate for layer segmentation error in Stargardt disease retinal OCT images

David Alonso-Caneiro, Jason Kugelman, Janelle Tong, Michael Kalloniatis, Fred K. Chen, Scott A. Read and Michael J. Collins
Proceedings of the 2021 Digital Image Computing: Techniques and Applications (DICTA), pp.1-8
Digital Image Computing: Techniques and Applications (DICTA) Conference, 2023 (Gold Coast, Australia, 29-Nov-2021–01-Dec-2021)
Institute of Electrical and Electronics Engineers
2021

Abstract

ABCA4 mutation Bayesian neural networks deep learning Image segmentation juvenile macular degeneration Measurement Monte Carlo methods OCT Optical coherence tomography Pathology segmentation Semantics Stargardt disease Uncertainty uncertainty quantification

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Domestic collaboration
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Computer Science, Artificial Intelligence
Imaging Science & Photographic Technology

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