MED-PHCVJul 29, 2016

Image Prediction for Limited-angle Tomography via Deep Learning with Convolutional Neural Network

arXiv:1607.08707v1101 citations
Originality Incremental advance
AI Analysis

This work addresses image quality improvement for limited-angle CT reconstructions, presenting an incremental method based on existing artifact characterization.

The paper tackled the limited-angle tomography problem in x-ray CT by developing a deep convolutional neural network to suppress artifacts in filtered back projection reconstructions, achieving stable performance in artifact reduction and detail recovery.

Limited angle problem is a challenging issue in x-ray computed tomography (CT) field. Iterative reconstruction methods that utilize the additional prior can suppress artifacts and improve image quality, but unfortunately require increased computation time. An interesting way is to restrain the artifacts in the images reconstructed from the practical filtered back projection (FBP) method. Frikel and Quinto have proved that the streak artifacts in FBP results could be characterized. It indicates that the artifacts created by FBP method have specific and similar characteristics in a stationary limited-angle scanning configuration. Based on this understanding, this work aims at developing a method to extract and suppress specific artifacts of FBP reconstructions for limited-angle tomography. A data-driven learning-based method is proposed based on a deep convolutional neural network. An end-to-end mapping between the FBP and artifact-free images is learned and the implicit features involving artifacts will be extracted and suppressed via nonlinear mapping. The qualitative and quantitative evaluations of experimental results indicate that the proposed method show a stable and prospective performance on artifacts reduction and detail recovery for limited angle tomography. The presented strategy provides a simple and efficient approach for improving image quality of the reconstruction results from limited projection data.

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