OSNet & MNetO: Two Types of General Reconstruction Architectures for Linear Computed Tomography in Multi-Scenarios
Zhisheng Wang, Zihan Deng, Fenglin Liu, Yixing Huang, Haijun Yu and, Junning Cui

TL;DR
This paper introduces two novel reconstruction architectures, OSNet and MNetO, for linear computed tomography that improve image quality across various scenarios by leveraging deep learning and transformer-based models.
Contribution
The paper proposes two reconstruction architectures, OSNet and MNetO, that avoid Hilbert filtering rotation operations and enhance image recovery in multi-scenario LCT.
Findings
OSNet outperforms traditional BPF in multiple scenarios.
ST-pix2pixGAN surpasses pix2pixGAN and CycleGAN in image quality.
MNetO provides reliable exterior edge imaging despite artifacts.
Abstract
Recently, linear computed tomography (LCT) systems have actively attracted attention. To weaken projection truncation and image the region of interest (ROI) for LCT, the backprojection filtration (BPF) algorithm is an effective solution. However, in BPF for LCT, it is difficult to achieve stable interior reconstruction, and for differentiated backprojection (DBP) images of LCT, multiple rotation-finite inversion of Hilbert transform (Hilbert filtering)-inverse rotation operations will blur the image. To satisfy multiple reconstruction scenarios for LCT, including interior ROI, complete object, and exterior region beyond field-of-view (FOV), and avoid the rotation operations of Hilbert filtering, we propose two types of reconstruction architectures. The first overlays multiple DBP images to obtain a complete DBP image, then uses a network to learn the overlying Hilbert filtering…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced MRI Techniques and Applications · Atomic and Subatomic Physics Research
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Attention Is All You Need · Instance Normalization · Batch Normalization · Cycle Consistency Loss · PatchGAN · Tanh Activation · Linear Layer · Multi-Head Attention · Byte Pair Encoding
