2024
DOI: 10.1063/5.0203977
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A novel Fourier neural operator framework for classification of multi-sized images: Application to three dimensional digital porous media

Ali Kashefi,
Tapan Mukerji

Abstract: Fourier neural operators (FNOs) are invariant with respect to the size of input images, and thus images with any size can be fed into FNO-based frameworks without any modification of network architectures, in contrast to traditional convolutional neural networks. Leveraging the advantage of FNOs, we propose a novel deep-learning framework for classifying images with varying sizes. Particularly, we simultaneously train the proposed network on multi-sized images. As a practical application, we consider the probl… Show more

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