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arXiv 提交日期: 2026-03-16
📄 Abstract - ILV: Iterative Latent Volumes for Fast and Accurate Sparse-View CT Reconstruction

A long-term goal in CT imaging is to achieve fast and accurate 3D reconstruction from sparse-view projections, thereby reducing radiation exposure, lowering system cost, and enabling timely imaging in clinical workflows. Recent feed-forward approaches have shown strong potential toward this overarching goal, yet their results still suffer from artifacts and loss of fine details. In this work, we introduce Iterative Latent Volumes (ILV), a feed-forward framework that integrates data-driven priors with classical iterative reconstruction principles to overcome key limitations of prior feed-forward models in sparse-view CBCT reconstruction. At its core, ILV constructs an explicit 3D latent volume that is repeatedly updated by conditioning on multi-view X-ray features and the learned anatomical prior, enabling the recovery of fine structural details beyond the reach of prior feed-forward models. In addition, we develop and incorporate several key architectural components, including an X-ray feature volume, group cross-attention, efficient self-attention, and view-wise feature aggregation, that efficiently realize its core latent volume refinement concept. Extensive experiments on a large-scale dataset of approximately 14,000 CT volumes demonstrate that ILV significantly outperforms existing feed-forward and optimization-based methods in both reconstruction quality and speed. These results show that ILV enables fast and accurate sparse-view CBCT reconstruction suitable for clinical use. The project page is available at: this https URL.

顶级标签: medical computer vision model training
详细标签: ct reconstruction sparse-view imaging iterative refinement 3d latent volume medical imaging 或 搜索:

ILV:用于快速准确稀疏视图CT重建的迭代潜在体积方法 / ILV: Iterative Latent Volumes for Fast and Accurate Sparse-View CT Reconstruction


1️⃣ 一句话总结

这篇论文提出了一种名为ILV的新型CT重建方法,它巧妙地将数据驱动的先验知识与经典迭代重建原理相结合,仅用少量X光投影就能快速生成高质量的三维图像,在显著降低辐射剂量和系统成本的同时,保持了优异的细节还原能力。

源自 arXiv: 2603.14915