Wang Guanghua, Feng Di, Tang Wenlai
Jiangsu Key Laboratory of 3D Printing Equipment and Manufacturing, School of Electrical and Automation Engineering, Nanjing Normal University, Nanjing 210023, China.
Jiangsu Key Laboratory for Design and Manufacture of Micro-Nano Biomedical Instruments, School of Mechanical Engineering, Southeast University, Nanjing 211189, China.
Micromachines (Basel). 2022 Jul 15;13(7):1120. doi: 10.3390/mi13071120.
Electrical impedance tomography (EIT) is a non-invasive, radiation-free imaging technique with a lot of promise in clinical monitoring. However, since EIT image reconstruction is a non-linear, pathological, and ill-posed issue, the quality of the reconstructed images needs constant improvement. To increase image reconstruction accuracy, a grey wolf optimized radial basis function neural network (GWO-RBFNN) is proposed in this paper. The grey wolf algorithm is used to optimize the weights in the radial base neural network, determine the mapping between the weights and the initial position of the grey wolf, and calculate the optimal position of the grey wolf to find the optimal solution for the weights, thus improving the image resolution of EIT imaging. COMSOL and MATLAB were used to numerically simulate the EIT system with 16 electrodes, producing 1700 simulation samples. The standard Landweber, RBFNN, and GWO-RBFNN approaches were used to train the sets separately. The obtained image correlation coefficient (ICC) of the test set after training with GWO-RBFNN is 0.9551. After adding 30, 40, and 50 dB of Gaussian white noise to the test set, the attained ICCs with GWO-RBFNN are 0.8966, 0.9197, and 0.9319, respectively. The findings reveal that the proposed GWO-RBFNN approach outperforms the existing methods when it comes to image reconstruction.
电阻抗断层成像(EIT)是一种无创、无辐射的成像技术,在临床监测方面具有很大的潜力。然而,由于EIT图像重建是一个非线性、病态且不适定的问题,重建图像的质量需要不断提高。为了提高图像重建精度,本文提出了一种灰狼优化径向基函数神经网络(GWO-RBFNN)。利用灰狼算法对径向基神经网络中的权重进行优化,确定权重与灰狼初始位置之间的映射关系,计算灰狼的最优位置以找到权重的最优解,从而提高EIT成像的图像分辨率。使用COMSOL和MATLAB对具有16个电极的EIT系统进行数值模拟,生成1700个模拟样本。分别使用标准Landweber、RBFNN和GWO-RBFNN方法对这些数据集进行训练。用GWO-RBFNN训练后测试集的图像相关系数(ICC)为0.9551。在测试集中添加30、40和50 dB的高斯白噪声后,GWO-RBFNN得到的ICC分别为0.8966、0.9197和0.9319。研究结果表明,在图像重建方面,所提出的GWO-RBFNN方法优于现有方法。