4.7 Article

DONet: Dual-Octave Network for Fast MR Image Reconstruction

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNNLS.2021.3090303

关键词

Image reconstruction; Imaging; Deep learning; Computational modeling; Task analysis; Mathematical model; Image recognition; Complex-valued data; feature fusion; image reconstruction; magnetic resonance (MR) imaging

资金

  1. NSFC [61876051]

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In this article, a novel dual-octave network (DONet) for parallel fast MR image reconstruction is proposed, which can learn multiscale spatial-frequency features from MR data to achieve efficient image reconstruction by encouraging information interaction and feature reuse between the real and imaginary components. Extensive experiments demonstrate the superiority of DONet in accelerated parallel MR image reconstruction under different undersampling patterns and acceleration factors.
Magnetic resonance (MR) image acquisition is an inherently prolonged process, whose acceleration has long been the subject of research. This is commonly achieved by obtaining multiple undersampled images, simultaneously, through parallel imaging. In this article, we propose the dual-octave network (DONet), which is capable of learning multiscale spatial-frequency features from both the real and imaginary components of MR data, for parallel fast MR image reconstruction. More specifically, our DONet consists of a series of dual-octave convolutions (Dual-OctConvs), which are connected in a dense manner for better reuse of features. In each Dual-OctConv, the input feature maps and convolutional kernels are first split into two components (i.e., real and imaginary) and then divided into four groups according to their spatial frequencies. Then, our Dual-OctConv conducts intragroup information updating and intergroup information exchange to aggregate the contextual information across different groups. Our framework provides three appealing benefits: 1) it encourages information interaction and fusion between the real and imaginary components at various spatial frequencies to achieve richer representational capacity; 2) the dense connections between the real and imaginary groups in each Dual-OctConv make the propagation of features more efficient by feature reuse; and 3) DONet enlarges the receptive field by learning multiple spatial-frequency features of both the real and imaginary components. Extensive experiments on two popular datasets (i.e., clinical knee and fastMRI), under different undersampling patterns and acceleration factors, demonstrate the superiority of our model in accelerated parallel MR image reconstruction.

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