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Department of Robotics and Mechatronics Engineering
Interactive Robot Lab
1. Journal Articles
Electrode Placement Optimization for Electrical Impedance Tomography Using Active Learning
Lee, Junhyeong
;
Park, Kyungseo
;
Park, Kundo
;
Kim, Yongtae
;
Kim, Jung
;
Ryu, Seunghwa
Department of Robotics and Mechatronics Engineering
Interactive Robot Lab
1. Journal Articles
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Title
Electrode Placement Optimization for Electrical Impedance Tomography Using Active Learning
Issued Date
2024-06
Citation
Lee, Junhyeong. (2024-06). Electrode Placement Optimization for Electrical Impedance Tomography Using Active Learning. Advanced Engineering Materials, 26(11). doi: 10.1002/adem.202301865
Type
Article
Author Keywords
data-driven optimization
;
electrical impedance tomography
;
machine learning
Keywords
DAMAGE DETECTION
;
DRIVE PATTERN
;
RECONSTRUCTION
;
DESIGN
;
SIZE
ISSN
1438-1656
Abstract
Electrical impedance tomography (EIT) offers a versatile imaging modality with a multitude of applications, although it encounters accuracy limitations. Herein, a novel systematic framework is presented that integrates a neural network (NN), active learning, and transfer learning to optimize electrode placement, improving image reconstruction performance based on user-defined metrics. Given the many-to-one mapping between electrode configuration and the performance metric, the approach utilizes a NN that predicts performance metrics from electrode placement input. To maintain NN's prediction accuracy for unseen electrode configurations, performance metrics are maximized while iteratively updating the NN via active learning during the optimization process. Transfer learning is employed to expedite optimization of electrode placements for time-consuming iterative reconstruction techniques by fine-tuning a NN initially trained on one-step reconstruction data. The method is validated using two representative reconstruction methods: one-step reconstruction with Newton's one-step error reconstructor prior and the iterative total variation method. This research underscores the potential of the proposed framework in addressing EIT's inherent limitations and augmenting its performance across diverse applications and reconstruction methods. The framework could potentially contribute to the advancement of noninvasive medical imaging, structural health monitoring, strain sensing, robotics, and other fields that depend on EIT. © 2024 The Authors. Advanced Engineering Materials published by Wiley-VCH GmbH.
URI
http://hdl.handle.net/20.500.11750/56941
DOI
10.1002/adem.202301865
Publisher
Wiley
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