Energy-efficient high-fidelity image reconstruction with memristor arrays for medical diagnosis

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作者
Han Zhao
Zhengwu Liu
Jianshi Tang
Bin Gao
Qi Qin
Jiaming Li
Ying Zhou
Peng Yao
Yue Xi
Yudeng Lin
He Qian
Huaqiang Wu
机构
[1] Tsinghua University,School of Integrated Circuits, Beijing National Research Center for Information Science and Technology (BNRist)
[2] Tsinghua University,Beijing Innovation Center for Future Chips (ICFC)
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摘要
Medical imaging is an important tool for accurate medical diagnosis, while state-of-the-art image reconstruction algorithms raise critical challenges in massive data processing for high-speed and high-quality imaging. Here, we present a memristive image reconstructor (MIR) to greatly accelerate image reconstruction with discrete Fourier transformation (DFT) by computing-in-memory (CIM) with memristor arrays. A high-accuracy quasi-analogue mapping (QAM) method and generic complex matrix transfer (CMT) scheme was proposed to improve the mapping precision and transfer efficiency, respectively. High-fidelity magnetic resonance imaging (MRI) and computed tomography (CT) image reconstructions were demonstrated, achieving software-equivalent qualities and DICE scores after segmentation with nnU-Net algorithm. Remarkably, our MIR exhibited 153× and 79× improvements in energy efficiency and normalized image reconstruction speed, respectively, compared to graphics processing unit (GPU). This work demonstrates MIR as a promising high-fidelity image reconstruction platform for future medical diagnosis, and also largely extends the application of memristor-based CIM beyond artificial neural networks.
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