Fidelity Imposed Network Edit (FINE) for Solving Ill-Posed Image Reconstruction (1905.07284v1)
Abstract: Deep learning (DL) is increasingly used to solve ill-posed inverse problems in imaging, such as reconstruction from noisy or incomplete data, as DL offers advantages over explicit image feature extractions in defining the needed prior. However, DL typically does not incorporate the precise physics of data generation or data fidelity. Instead, DL networks are trained to output some average response to an input. Consequently, DL image reconstruction contains errors, and may perform poorly when the test data deviates significantly from the training data, such as having new pathological features. To address this lack of data fidelity problem in DL image reconstruction, a novel approach, which we call fidelity-imposed network edit (FINE), is proposed. In FINE, a pre-trained prior network's weights are modified according to the physical model, on a test case. Our experiments demonstrate that FINE can achieve superior performance in two important inverse problems in neuroimaging: quantitative susceptibility mapping (QSM) and under-sampled reconstruction in MRI.
- Jinwei Zhang (32 papers)
- Zhe Liu (234 papers)
- Shun Zhang (105 papers)
- Hang Zhang (164 papers)
- Pascal Spincemaille (21 papers)
- Thanh D. Nguyen (18 papers)
- Mert R. Sabuncu (87 papers)
- Yi Wang (1038 papers)