IVMTRL-SCICVOct 9, 2025

Interlaced dynamic XCT reconstruction with spatio-temporal implicit neural representations

arXiv:2510.08641v1h-index: 12
Originality Incremental advance
AI Analysis

This work addresses reconstruction challenges in dynamic XCT imaging, which is important for medical and industrial applications, though it appears to be an incremental improvement over existing methods.

The authors tackled dynamic X-ray computed tomography reconstruction under interlaced acquisition schemes by combining ADMM-based optimization with spatio-temporal implicit neural representations, achieving strong performance that outperforms the state-of-the-art TIMBIR method across various undersampling, spatial complexity, and noise conditions.

In this work, we investigate the use of spatio-temporalImplicit Neural Representations (INRs) for dynamic X-ray computed tomography (XCT) reconstruction under interlaced acquisition schemes. The proposed approach combines ADMM-based optimization with INCODE, a conditioning framework incorporating prior knowledge, to enable efficient convergence. We evaluate our method under diverse acquisition scenarios, varying the severity of global undersampling, spatial complexity (quantified via spatial information), and noise levels. Across all settings, our model achieves strong performance and outperforms Time-Interlaced Model-Based Iterative Reconstruction (TIMBIR), a state-of-the-art model-based iterative method. In particular, we show that the inductive bias of the INR provides good robustness to moderate noise levels, and that introducing explicit noise modeling through a weighted least squares data fidelity term significantly improves performance in more challenging regimes. The final part of this work explores extensions toward a practical reconstruction framework. We demonstrate the modularity of our approach by explicitly modeling detector non-idealities, incorporating ring artifact correction directly within the reconstruction process. Additionally, we present a proof-of-concept 4D volumetric reconstruction by jointly optimizing over batched axial slices, an approach which opens up the possibilities for massive parallelization, a critical feature for processing large-scale datasets.

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