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Three Dimensional Microwave Data Inversion in Feature Space for Stroke Imaging

Rui Guo, Zhichao Lin, Jingyu Xin, Maokun Li, Fan Yang, Shenheng Xu, Aria Abubakar

2023IEEE Transactions on Medical Imaging17 citationsDOI

Abstract

Microwave imaging is a promising method for early diagnosing and monitoring brain strokes. It is portable, non-invasive, and safe to the human body. Conventional techniques solve for unknown electrical properties represented as pixels or voxels, but often result in inadequate structural information and high computational costs. We propose to reconstruct the three dimensional (3D) electrical properties of the human brain in a feature space, where the unknowns are latent codes of a variational autoencoder (VAE). The decoder of the VAE, with prior knowledge of the brain, acts as a module of data inversion. The codes in the feature space are optimized by minimizing the misfit between measured and simulated data. A dataset of 3D heads characterized by permittivity and conductivity is constructed to train the VAE. Numerical examples show that our method increases structural similarity by 14% and speeds up the solution process by over 3 orders of magnitude using only 4.8% number of the unknowns compared to the voxel-based method. This high-resolution imaging of electrical properties leads to more accurate stroke diagnosis and offers new insights into the study of the human brain.

Topics & Concepts

VoxelComputer scienceAutoencoderArtificial intelligenceMicrowave imagingFeature vectorPixelPattern recognition (psychology)Inversion (geology)Feature (linguistics)Feature extractionIterative reconstructionComputer visionMicrowaveDeep learningGeologyPaleontologyLinguisticsStructural basinTelecommunicationsPhilosophyMicrowave Imaging and Scattering AnalysisGeophysical Methods and ApplicationsUltrasonics and Acoustic Wave Propagation
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