用于肺电阻抗断层成像图像重建的Kolmogorov-Arnold视觉变压器

Ibrar Amin;Shuaikai Shi;Hasan AlMarzouqi;Zeyar Aung;Waqar Ahmed;Panos Liatsis
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引用次数: 0

摘要

电阻抗断层扫描是一种无创、非电离的成像技术,可以实时监测人体内部结构和功能,在肺部监测中尤其受欢迎。然而,相关的逆问题是病态的,导致低空间分辨率的次优图像质量,这阻碍了它在临床环境中的实际应用。为了实现可靠的图像重建,本工作提出了一种新的深度学习方法,应用于肺部监测。提出的模型是视觉变压器和最近引入的Kolmogorov Arnold网络(KAN)的混合模型。变压器中的全连接层被KAN层取代,这增强了其学习肺部电压测量与电导率分布之间复杂关系的能力。与使用卷积模型和Vision Transformer的方法相比,该方法的均方误差为0.0045,结构相似度指数为0.96,相对误差为0.11,相关系数为0.98。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kolmogorov-Arnold Vision Transformer for Image Reconstruction in Lung Electrical Impedance Tomography
Electrical impedance tomography is a non-invasive and non-ionizing imaging technique, which can provide real-time monitoring of the internal structures and function of the human body, and has been particularly popular in lung monitoring. However, the associated inverse problem is ill-posed, leading to suboptimal image quality with low spatial resolution, which hinders its practical use in the clinical settings. To achieve reliable image reconstruction, this work proposes a novel deep learning approach, applied to lung monitoring. The proposed model is a hybrid of the vision transformer and the recently introduced Kolmogorov Arnold Network (KAN). The fully connected layers in the transformer are replaced with KAN layers, which enhances its ability to learn the complex relationship between the voltage measurements and the conductivity distribution within the lungs. In comparison with the use of convolutional models and Vision Transformer, the proposed method achieves outstanding performance with a mean squared error of 0.0045, structural similarity index of 0.96, relative error of 0.11, and correlation coefficient of 0.98.
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CiteScore
12.60
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