2D Numerical Dataset for Microwave SVM-Based Brain Stroke Classification

2023 Photonics & Electromagnetics Research Symposium (PIERS)(2023)

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摘要
In this study, we investigated microwave stroke detection and classification using machine learning algorithms. To obtain large datasets with high data variability, we utilized two distinct 2D numerical models. Next, we employed PCA to reduce the data dimensions and evaluated classification performance of six different machine learning algorithms. Additionally, we investigated the impact of the way how the matching medium is placed in front of the antennas, which enhanced the variability of the principal components. Despite this improvement, we observed only a slight increase in the accuracy of stroke classification.
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关键词
2D numerical dataset,data dimensions,distinct 2D numerical models,evaluated classification performance,high data variability,matching medium,microwave stroke detection,microwave SVM-based brain,PCA,stroke classification
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