CVLGJun 27, 2023

See Through the Fog: Curriculum Learning with Progressive Occlusion in Medical Imaging

arXiv:2306.15574v26 citationsh-index: 43
Originality Incremental advance
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This addresses a common challenge in clinical medical imaging where critical features are often occluded, offering a method to enhance diagnostic reliability.

The paper tackles the problem of deep learning models struggling with occluded medical images by proposing a curriculum learning approach that progressively introduces occlusion, resulting in substantial improvements in model robustness and diagnostic accuracy.

In recent years, deep learning models have revolutionized medical image interpretation, offering substantial improvements in diagnostic accuracy. However, these models often struggle with challenging images where critical features are partially or fully occluded, which is a common scenario in clinical practice. In this paper, we propose a novel curriculum learning-based approach to train deep learning models to handle occluded medical images effectively. Our method progressively introduces occlusion, starting from clear, unobstructed images and gradually moving to images with increasing occlusion levels. This ordered learning process, akin to human learning, allows the model to first grasp simple, discernable patterns and subsequently build upon this knowledge to understand more complicated, occluded scenarios. Furthermore, we present three novel occlusion synthesis methods, namely Wasserstein Curriculum Learning (WCL), Information Adaptive Learning (IAL), and Geodesic Curriculum Learning (GCL). Our extensive experiments on diverse medical image datasets demonstrate substantial improvements in model robustness and diagnostic accuracy over conventional training methodologies.

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