Machine Learning-Based Monostatic Microwave Radar for Building Material Classification.

I2MTC(2023)

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摘要
A Microwave nondestructive testing and evaluation (MNDT&E) method combining a broadband continuous wave (CW) monostatic radar and machine learning (ML) algorithms is proposed for building materials classification. A low-power and compact system using commercial solutions is considered. The data collected, i.e. complex reflection coefficient S 11 , are pre-processed then used as inputs to train support vector machine (SVM) and decision tree classifier (DCT) algorithms. The trained ML models achieved accuracy of 97.88% for DCT and 88.60% for SVM confirming the interest of the method for contactless building material classification.
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关键词
Microwave nondestructive testing and evaluation (MNDT&E),microwave radar,material characterization,machine learning (ML),classification
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