Beyond a Single Mode: GAN Ensembles for Diverse Medical Data Generation
Journal:
arXiv
Published Date:
Mar 31, 2025
Abstract
The advancement of generative AI, particularly in medical imaging, confronts
the trilemma of ensuring high fidelity, diversity, and efficiency in synthetic
data generation. While Generative Adversarial Networks (GANs) have shown
promise across various applications, they still face challenges like mode
collapse and insufficient coverage of real data distributions. This work
explores the use of GAN ensembles to overcome these limitations, specifically
in the context of medical imaging. By solving a multi-objective optimisation
problem that balances fidelity and diversity, we propose a method for selecting
an optimal ensemble of GANs tailored for medical data. The selected ensemble is
capable of generating diverse synthetic medical images that are representative
of true data distributions and computationally efficient. Each model in the
ensemble brings a unique contribution, ensuring minimal redundancy. We
conducted a comprehensive evaluation using three distinct medical datasets,
testing 22 different GAN architectures with various loss functions and
regularisation techniques. By sampling models at different training epochs, we
crafted 110 unique configurations. The results highlight the capability of GAN
ensembles to enhance the quality and utility of synthetic medical images,
thereby improving the efficacy of downstream tasks such as diagnostic
modelling.