Improving the Generalisation of Learned Reconstruction Frameworks
Emilien Valat, Ozan \"Oktem

TL;DR
This paper introduces a graph-based neural network architecture called GLM for X-ray CT reconstruction, which improves generalization, reduces parameters, and outperforms CNNs on varied datasets and geometries.
Contribution
The paper proposes a novel graph-structured data representation and a hybrid neural network architecture that enhances generalization and efficiency in CT image reconstruction.
Findings
GLM outperforms CNNs in image quality metrics.
GLM requires fewer parameters and less training time.
GLM generalizes well to unseen acquisition geometries.
Abstract
Ensuring proper generalization is a critical challenge in applying data-driven methods for solving inverse problems in imaging, as neural networks reconstructing an image must perform well across varied datasets and acquisition geometries. In X-ray Computed Tomography (CT), convolutional neural networks (CNNs) are widely used to filter the projection data but are ill-suited for this task as they apply grid-based convolutions to the sinogram, which inherently lies on a line manifold, not a regular grid. The CNNs, unaware of the geometry, are implicitly tied to it and require an excessive amount of parameters as they must infer the relations between measurements from the data rather than from prior information. The contribution of this paper is twofold. First, we introduce a graph data structure to represent CT acquisition geometries and tomographic data, providing a detailed…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Advanced X-ray Imaging Techniques
