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Deep Filtered Back Projection for CT Reconstruction | IEEE Journals & Magazine | IEEE Xplore

Deep Filtered Back Projection for CT Reconstruction


A novel framework named DeepFBP is proposed in which an optimized filter and an optimized nonlinear interpolation operator are learned with neural networks. DeepFBP remai...

Abstract:

Filtered back projection (FBP) is a classic analytical algorithm for computed tomography (CT) reconstruction, with high computational efficiency. However, images reconstr...Show More

Abstract:

Filtered back projection (FBP) is a classic analytical algorithm for computed tomography (CT) reconstruction, with high computational efficiency. However, images reconstructed by FBP often suffer from excessive noise and artifacts. The original FBP algorithm uses a window function to smooth signals and a linear interpolation to estimate projection values at un-sampled locations. In this study, we propose a novel framework named DeepFBP in which an optimized filter and an optimized nonlinear interpolation operator are learned with neural networks. Specifically, the learned filter can be considered as the product of an optimized window function and the ramp filter, and the learned interpolation can be considered as an optimized way to utilize projection information of nearby locations through nonlinear combination. The proposed method remains the high computational efficiency of the original FBP and achieves much better reconstruction quality at different noise levels. It also outperforms the TV-based statistical iterative algorithm, with computational time being reduced in an order of two, and state-of-the-art post-processing deep learning methods that have deeper and more complicated network structures.
A novel framework named DeepFBP is proposed in which an optimized filter and an optimized nonlinear interpolation operator are learned with neural networks. DeepFBP remai...
Published in: IEEE Access ( Volume: 12)
Page(s): 20962 - 20972
Date of Publication: 22 January 2024
Electronic ISSN: 2169-3536
PubMed ID: 39211346

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