Su Zenglan, Soleimani Manuchehr, Jiang Yandan, Ji Haifeng, Wang Baoliang
State Key Laboratory of Industrial Control Technology, College of Control Science and Engineering, Zhejiang University, Hangzhou 310027, China.
Engineering Tomography Laboratory (ETL), Department of Electronic and Electrical Engineering, University of Bath, Bath BA2 7AY, UK.
Entropy (Basel). 2023 Jan 11;25(1):148. doi: 10.3390/e25010148.
Regularization with priors is an effective approach to solve the ill-posed inverse problem of electrical tomography. Entropy priors have been proven to be promising in radiation tomography but have received less attention in the literature of electrical tomography. This work aims to investigate the image reconstruction of capacitively coupled electrical resistance tomography (CCERT) with entropy priors. Four types of entropy priors are introduced, including the image entropy, the projection entropy, the image-projection joint entropy, and the cross-entropy between the measurement projection and the forward projection. Correspondingly, objective functions with the four entropy priors are developed, where the first three are implemented under the maximum entropy strategy and the last one is implemented under the minimum cross-entropy strategy. Linear back-projection is adopted to obtain the initial image. The steepest descent method is utilized to optimize the objective function and obtain the final image. Experimental results show that the four entropy priors are effective in regularization of the ill-posed inverse problem of CCERT to obtain a reasonable solution. Compared with the initial image obtained by linear back projection, all the four entropy priors make sense in improving the image quality. Results also indicate that cross-entropy has the best performance among the four entropy priors in the image reconstruction of CCERT.
带先验的正则化是解决电阻抗断层成像不适定逆问题的一种有效方法。熵先验已被证明在辐射断层成像中很有前景,但在电阻抗断层成像文献中受到的关注较少。这项工作旨在研究带熵先验的电容耦合电阻抗断层成像(CCERT)的图像重建。引入了四种类型的熵先验,包括图像熵、投影熵、图像 - 投影联合熵以及测量投影与正向投影之间的交叉熵。相应地,开发了带有这四种熵先验的目标函数,其中前三种是在最大熵策略下实现的,最后一种是在最小交叉熵策略下实现的。采用线性反投影来获得初始图像。利用最速下降法优化目标函数并获得最终图像。实验结果表明,这四种熵先验在正则化CCERT的不适定逆问题以获得合理解方面是有效的。与通过线性反投影获得的初始图像相比,所有这四种熵先验在提高图像质量方面都有意义。结果还表明,在CCERT的图像重建中,交叉熵在这四种熵先验中具有最佳性能。