Assessing the ability of generative adversarial networks to learn
canonical medical image statistics
- URL: http://arxiv.org/abs/2204.12007v2
- Date: Wed, 27 Apr 2022 01:28:32 GMT
- Title: Assessing the ability of generative adversarial networks to learn
canonical medical image statistics
- Authors: Varun A. Kelkar, Dimitrios S. Gotsis, Frank J. Brooks, Prabhat KC,
Kyle J. Myers, Rongping Zeng and Mark A. Anastasio
- Abstract summary: generative adversarial networks (GANs) have gained tremendous popularity for potential applications in medical imaging.
It is not clear if modern GANs reliably learn the statistics that are meaningful to a downstream medical imaging application.
In this work, the ability of a state-of-the-art GAN to learn the statistics of canonical image models (SIMs) that are relevant to objective assessment of image quality is investigated.
- Score: 10.479865560555199
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In recent years, generative adversarial networks (GANs) have gained
tremendous popularity for potential applications in medical imaging, such as
medical image synthesis, restoration, reconstruction, translation, as well as
objective image quality assessment. Despite the impressive progress in
generating high-resolution, perceptually realistic images, it is not clear if
modern GANs reliably learn the statistics that are meaningful to a downstream
medical imaging application. In this work, the ability of a state-of-the-art
GAN to learn the statistics of canonical stochastic image models (SIMs) that
are relevant to objective assessment of image quality is investigated. It is
shown that although the employed GAN successfully learned several basic first-
and second-order statistics of the specific medical SIMs under consideration
and generated images with high perceptual quality, it failed to correctly learn
several per-image statistics pertinent to the these SIMs, highlighting the
urgent need to assess medical image GANs in terms of objective measures of
image quality.
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