Lossy compression of multidimensional medical images using sinusoidal activation networks: an evaluation study
Matteo Mancini, Derek K. Jones, Marco Palombo

TL;DR
This study demonstrates that neural networks with sinusoidal activation functions can effectively compress high-dimensional 4D medical images, outperforming traditional algorithms and preserving critical data features for clinical use.
Contribution
The paper introduces a novel application of sinusoidal activation networks for lossy compression of 4D medical images, extending implicit neural representation techniques beyond 2D images.
Findings
Achieves approximately 10x higher compression rate than DEFLATE.
Outperforms ReLU and Tanh architectures in accuracy metrics.
Maintains data fidelity comparable to standard denoising methods.
Abstract
In this work, we evaluate how neural networks with periodic activation functions can be leveraged to reliably compress large multidimensional medical image datasets, with proof-of-concept application to 4D diffusion-weighted MRI (dMRI). In the medical imaging landscape, multidimensional MRI is a key area of research for developing biomarkers that are both sensitive and specific to the underlying tissue microstructure. However, the high-dimensional nature of these data poses a challenge in terms of both storage and sharing capabilities and associated costs, requiring appropriate algorithms able to represent the information in a low-dimensional space. Recent theoretical developments in deep learning have shown how periodic activation functions are a powerful tool for implicit neural representation of images and can be used for compression of 2D images. Here we extend this approach to 4D…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · MRI in cancer diagnosis · Advanced MRI Techniques and Applications
MethodsTanh Activation
