微波医学图像分割用于脑卒中诊断:成像-过程-知情图像处理

Chenghui Liu, Zheng Gong, Yifan Chen, Shuaiting Yao
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引用次数: 0

摘要

在本文中,我们提出了一种新的图像分割方法,该方法考虑了成像过程中的不确定性。利用先验信息增强脑卒中区域与健康组织的对比。采用畸变玻恩迭代法(DBIM)重建脑卒中区域。由于DBIM导致实际介电常数与估计介电常数之间的非线性关系,使得微波医学图像缺乏清晰的边界,这给传统方法的准确分割带来了挑战。该方法对传统的阈值分割方法进行了改进,实现了有效的图像分割。从仿真结果来看,传统方法的区域误分类率为89%,而本文方法的区域误分类率仅为13%。结果表明,介质常数的再现精度提高了58.85%。
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Microwave Medical Image Segmentation for Brain Stroke Diagnosis: Imaging-Process-Informed Image Processing
In this paper, we propose a novel imaging-process-informed image segmentation method that accounts for uncertainty during the imaging process. A priori information is incorporated to enhance the contrast between stroke area and healthy tissues. The distorted Born iterative method (DBIM) is utilized to reconstruct the stroke area of the brain. Due to the non-linear relationship between actual and estimated dielectric constants resulting from DBIM, the microwave medical image lacks a clearly defined boundary, posing a challenge to accurately segment it using traditional methods. The proposed method achieves effective image segmentation by improving the traditional threshold method. From the simulation results, the region misclassified by the traditional method accounts for 89%, while the proposed method results in a misclassification rate of only 13%. The results demonstrate a significant improvement of 58.85% in accurately reproducing the dielectric constants.
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