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Shape-Driven EIT Reconstruction Using Fourier Representations

Dong Liu, Danping Gu, Danny Smyl, Anil Kumar Khambampati, Jiansong Deng, Jiangfeng Du

2020IEEE Transactions on Medical Imaging35 citationsDOI

Abstract

Shape-driven approaches have been proposed as an effective strategy for the electrical impedance tomography (EIT) reconstruction problem in recent years. In order to augment the shape-driven approaches, we propose a new method that transforms the shape to be reconstructed as basic primitives directly modeled by using Fourier representations. To allow automatic topological changes between the basic primitives and surrounding objects simultaneously, Boolean operations are employed. The Boolean operations with direct representation of primitives can be utilized for dimensionality and ill-posedness reduction, enabling feasible shape and topology optimization with shape-driven approaches. As a proof of principle, we leverage the proposed method for two dimensional shape reconstruction in EIT with various conductivity distributions. We demonstrate that our method is able to improve EIT reconstructions by enabling accurate shape and topology optimization.

Topics & Concepts

Electrical impedance tomographyIterative reconstructionFourier transformTopology (electrical circuits)Computer scienceLeverage (statistics)AlgorithmShape optimizationRepresentation (politics)Topology optimizationTomographyComputer visionArtificial intelligenceMathematicsFinite element methodMathematical analysisPhysicsOpticsPolitical sciencePoliticsCombinatoricsLawThermodynamicsElectrical and Bioimpedance TomographyMicrofluidic and Bio-sensing TechnologiesFlow Measurement and Analysis
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