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Learning with Limited Labels For Medical Image Analysis

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thesis
posted on 2024-03-22, 00:33 authored by EDIRISINGHE ARACHCHIGE HIMASHI AMANDA PEIRIS
Despite the tremendous progress, the need to have large-scale annotated data to train neural network models is, at best, undesirable, and improving the representation power of these models for medical images while preserving intrinsic properties of volumetric medical image modalities is yet under-explored. Obtaining well-annotated labels for medical images requires professional experts and heedful manual labeling, which is expensive and laborious, especially for 3D medical modalities (e.g., MRI and CT). This research addresses the necessity of designing models capable of learning intrinsic properties with limited labels, which is surprisingly not well-explored in the literature.

History

Campus location

Australia

Principal supervisor

Mehrtash Harandi

Additional supervisor 1

Zhaolin Chen

Additional supervisor 2

Munawar Hayat

Additional supervisor 3

Gary Egan

Year of Award

2024

Department, School or Centre

Electrical and Computer Systems Engineering

Additional Institution or Organisation

Monash Biomedical Imaging

Course

Doctor of Philosophy

Degree Type

DOCTORATE

Faculty

Faculty of Engineering