TY - GEN
T1 - Tomo-NeRL: tomographic neural representation learning for implicit CT image reconstruction
AU - Tang, Xiaoqin
AU - Tan, Boheng
AU - Guo, Yuanhao
AU - Yu, Xianping
AU - Kendrick, Jake
AU - Reynolds, Mark
PY - 2025/1/10
Y1 - 2025/1/10
N2 - CT image reconstruction is a challenging inverse problem of estimating image intensities from sensor signals. While deep learning-based methods hold promise, they are typically classified into fully-supervised, self-supervised, and case-by-case approaches, each offering distinct advantages and limitations. Among these, case-by-case reconstruction techniques, exemplified by models like NeRP, provide the advantage of flexible data-sampling and image sizes, making them well-suited for the complex CT inverse problem. However, existing case-by-case models encounter difficulties in achieving precise reconstructions, particularly in sparse-view scenarios. To address this limitation, we propose tomo-NeRL, a novel implicit reconstruction model that incorporates tomographic information of individual pixels within the reconstruction network. By harnessing this tomo-graphic data for implicit inverse learning, tomo-NeRL enhances reconstruction quality while effectively mitigating artifacts. The core innovation of tomo-NeRL lies in defining and extracting tomographic insights, such as visual characteristics and spatial variations specific to tomographic imaging, from the sinogram data for individual pixels. Moreover, our work introduces an adaptive inversion framework that amalgamates tomographic information from diverse projection angles, constructing a latent feature space that enhances the reconstruction process. Extensive experiments unequivocally showcase tomo-NeRL’s outstanding reconstruction performance, excelling in artifact suppression and detail preservation, especially in sparse-view scenarios.
AB - CT image reconstruction is a challenging inverse problem of estimating image intensities from sensor signals. While deep learning-based methods hold promise, they are typically classified into fully-supervised, self-supervised, and case-by-case approaches, each offering distinct advantages and limitations. Among these, case-by-case reconstruction techniques, exemplified by models like NeRP, provide the advantage of flexible data-sampling and image sizes, making them well-suited for the complex CT inverse problem. However, existing case-by-case models encounter difficulties in achieving precise reconstructions, particularly in sparse-view scenarios. To address this limitation, we propose tomo-NeRL, a novel implicit reconstruction model that incorporates tomographic information of individual pixels within the reconstruction network. By harnessing this tomo-graphic data for implicit inverse learning, tomo-NeRL enhances reconstruction quality while effectively mitigating artifacts. The core innovation of tomo-NeRL lies in defining and extracting tomographic insights, such as visual characteristics and spatial variations specific to tomographic imaging, from the sinogram data for individual pixels. Moreover, our work introduces an adaptive inversion framework that amalgamates tomographic information from diverse projection angles, constructing a latent feature space that enhances the reconstruction process. Extensive experiments unequivocally showcase tomo-NeRL’s outstanding reconstruction performance, excelling in artifact suppression and detail preservation, especially in sparse-view scenarios.
KW - Representation learning
KW - Visualization
KW - Technological innovation
KW - Inverse problems
KW - Computed tomography
KW - Training data
KW - Tomography
KW - Reconstruction algorithms
KW - Data mining
KW - Image reconstruction
U2 - 10.1109/BIBM62325.2024.10822003
DO - 10.1109/BIBM62325.2024.10822003
M3 - Conference paper
SN - 979-8-3503-8623-3
T3 - Proceedings - 2024 IEEE International Conference on Bioinformatics and Biomedicine, BIBM 2024
SP - 2481
EP - 2488
BT - 2024 IEEE International Conference on Bioinformatics and Biomedicine (BIBM)
A2 - Cannataro, Mario
A2 - Zheng, Huiru
A2 - Gao, Lin
A2 - Cheng, Jianlin
A2 - de Miranda, Joao Luis
A2 - Zumpano, Ester
A2 - Hu, Xiaohua
A2 - Cho, Young-Rae
A2 - Park, Taesung
PB - IEEE DataPort
T2 - 2024 IEEE International Conference on Bioinformatics and Biomedicine (BIBM)
Y2 - 3 December 2024 through 6 December 2024
ER -