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Operational Learning-Based Boundary Estimation in Electromagnetic Medical Imaging | IEEE Journals & Magazine | IEEE Xplore

Operational Learning-Based Boundary Estimation in Electromagnetic Medical Imaging


Abstract:

Incorporating boundaries of the imaging object as a priori information to imaging algorithms can significantly improve the performance of EM medical imaging systems. To a...Show More

Abstract:

Incorporating boundaries of the imaging object as a priori information to imaging algorithms can significantly improve the performance of EM medical imaging systems. To avoid overly complicating the system by using different sensors and the adverse effect of the subject’s movement, a learning-based method is proposed to estimate the boundary (external contour) of the imaged object using the same EM imaging data. While imaging techniques may discard the reflection coefficients for being dominant and uninformative for imaging, these parameters are made use of for boundary detection. The learned model is verified through independent clinical human trials by using a head imaging system with a 16-element antenna array that works across the band 0.7–1.6 GHz. The evaluation demonstrated that the model achieves average dissimilarity of 0.012 in Hu-moment while detecting head boundary. The model enables fast scan and image creation while eliminating the need for additional devices for accurate boundary estimation.
Published in: IEEE Transactions on Antennas and Propagation ( Volume: 70, Issue: 3, March 2022)
Page(s): 2234 - 2245
Date of Publication: 17 September 2021

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