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Papers/Task Transformer Network for Joint MRI Reconstruction and ...

Task Transformer Network for Joint MRI Reconstruction and Super-Resolution

Chun-Mei Feng, Yunlu Yan, Huazhu Fu, Li Chen, Yong Xu

2021-06-12Super-ResolutionImage ReconstructionMRI ReconstructionImage Super-Resolution
PaperPDFCode(official)

Abstract

The core problem of Magnetic Resonance Imaging (MRI) is the trade off between acceleration and image quality. Image reconstruction and super-resolution are two crucial techniques in Magnetic Resonance Imaging (MRI). Current methods are designed to perform these tasks separately, ignoring the correlations between them. In this work, we propose an end-to-end task transformer network (T$^2$Net) for joint MRI reconstruction and super-resolution, which allows representations and feature transmission to be shared between multiple task to achieve higher-quality, super-resolved and motion-artifacts-free images from highly undersampled and degenerated MRI data. Our framework combines both reconstruction and super-resolution, divided into two sub-branches, whose features are expressed as queries and keys. Specifically, we encourage joint feature learning between the two tasks, thereby transferring accurate task information. We first use two separate CNN branches to extract task-specific features. Then, a task transformer module is designed to embed and synthesize the relevance between the two tasks. Experimental results show that our multi-task model significantly outperforms advanced sequential methods, both quantitatively and qualitatively.

Results

TaskDatasetMetricValueModel
Super-ResolutionIXIPSNR 2x T2w29.38T2Net
Super-ResolutionIXIPSNR 4x T2w28.66T2Net
Super-ResolutionIXISSIM 4x T2w0.85T2Net
Super-ResolutionIXISSIM for 2x T2w0.872T2Net
Image Super-ResolutionIXIPSNR 2x T2w29.38T2Net
Image Super-ResolutionIXIPSNR 4x T2w28.66T2Net
Image Super-ResolutionIXISSIM 4x T2w0.85T2Net
Image Super-ResolutionIXISSIM for 2x T2w0.872T2Net
3D Object Super-ResolutionIXIPSNR 2x T2w29.38T2Net
3D Object Super-ResolutionIXIPSNR 4x T2w28.66T2Net
3D Object Super-ResolutionIXISSIM 4x T2w0.85T2Net
3D Object Super-ResolutionIXISSIM for 2x T2w0.872T2Net
16kIXIPSNR 2x T2w29.38T2Net
16kIXIPSNR 4x T2w28.66T2Net
16kIXISSIM 4x T2w0.85T2Net
16kIXISSIM for 2x T2w0.872T2Net

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