English

Super resolution dual-layer CBCT imaging with model-guided deep learning

Medical Physics 2023-06-29 v1

Abstract

Objective: This study aims at investigating a novel super resolution CBCT imaging technique with the dual-layer flat panel detector (DL-FPD). Approach: In DL-FPD based CBCT imaging, the low-energy and high-energy projections acquired from the top and bottom detector layers contain intrinsically mismatched spatial information, from which super resolution CBCT images can be generated. To explain, a simple mathematical model is established according to the signal formation procedure in DL-FPD. Next, a dedicated recurrent neural network (RNN), named as suRi-Net, is designed by referring to the above imaging model to retrieve the high resolution dual-energy information. Different phantom experiments are conducted to validate the performance of this newly developed super resolution CBCT imaging method. Main Results: Results show that the proposed suRi-Net can retrieve high spatial resolution information accurately from the low-energy and high-energy projections having lower spatial resolution. Quantitatively, the spatial resolution of the reconstructed CBCT images of the top and bottom detector layers is increased by about 45% and 54%, respectively. Significance: In future, suRi-Net provides a new approach to achieve high spatial resolution dual-energy imaging in DL-FPD based CBCT systems.

Keywords

Cite

@article{arxiv.2306.16002,
  title  = {Super resolution dual-layer CBCT imaging with model-guided deep learning},
  author = {Jiongtao Zhu and Ting Su and Xin Zhang and Han Cui and Yuhang Tan and Hairong Zheng and Dong Liang and Jinchuan Guo and Yongshuai Ge},
  journal= {arXiv preprint arXiv:2306.16002},
  year   = {2023}
}
R2 v1 2026-06-28T11:16:30.645Z