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Image Reconstruction for Multi-frequency Electromagnetic Tomography based on Multiple Measurement Vector Model

机译:基于多重测量矢量模型的多频电磁层析成像图像重建

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Imaging the bio-impedance distribution of a biological sample can provide understandings about the sample’s electrical properties which is an important indicator of physiological status. This paper presents a multi-frequency electromagnetic tomography (mfEMT) technique for biomedical imaging. The system consists of 8 channels of gradiometer coils with adjustable sensitivity and excitation frequency. To exploit the frequency correlation among each measurement, we reconstruct multiple frequency data simultaneously based on the Multiple Measurement Vector (MMV) model. The MMV problem is solved by using a sparse Bayesian learning method that is especially effective for sparse distribution. Both simulations and experiments have been conducted to verify the performance of the method. Results show that by taking advantage of multiple measurements, the proposed method is more robust to noisy data for ill-posed problems compared to the commonly used single measurement vector model.
机译:对生物样品的生物阻抗分布进行成像可以提供对样品电特性的了解,这是生理状态的重要指标。本文提出了一种用于生物医学成像的多频电磁层析成像(mfEMT)技术。该系统由8个梯度计线圈的通道组成,灵敏度和激励频率可调。为了利用每次测量之间的频率相关性,我们基于多重测量矢量(MMV)模型同时重建多个频率数据。通过使用对稀疏分布特别有效的稀疏贝叶斯学习方法解决了MMV问题。已经进行了仿真和实验以验证该方法的性能。结果表明,与多次使用的单次测量矢量模型相比,通过多次测量,该方法对不适定问题的噪声数据具有更强的鲁棒性。

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