Quantum Neural Network for Accelerated Magnetic Resonance Imaging
- URL: http://arxiv.org/abs/2410.09406v1
- Date: Sat, 12 Oct 2024 07:26:35 GMT
- Title: Quantum Neural Network for Accelerated Magnetic Resonance Imaging
- Authors: Shuo Zhou, Yihang Zhou, Congcong Liu, Yanjie Zhu, Hairong Zheng, Dong Liang, Haifeng Wang,
- Abstract summary: This article proposes a hybrid neural network containing quantum and classical networks for fast magnetic resonance imaging.
The experimental results indicate that the hybrid network has achieved excellent reconstruction results, and also confirm the feasibility of applying hybrid quantum-classical neural networks into the image reconstruction of rapid magnetic resonance imaging.
- Score: 20.014015582919182
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Magnetic resonance image reconstruction starting from undersampled k-space data requires the recovery of many potential nonlinear features, which is very difficult for algorithms to recover these features. In recent years, the development of quantum computing has discovered that quantum convolution can improve network accuracy, possibly due to potential quantum advantages. This article proposes a hybrid neural network containing quantum and classical networks for fast magnetic resonance imaging, and conducts experiments on a quantum computer simulation system. The experimental results indicate that the hybrid network has achieved excellent reconstruction results, and also confirm the feasibility of applying hybrid quantum-classical neural networks into the image reconstruction of rapid magnetic resonance imaging.
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