Intelligent Material Classification and Identification Using a Broadband Millimeter-Wave Frequency Comb Receiver

Babak Jamali, D. Ramalingam, A. Babakhani
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Abstract

Millimeter-wave radars offer a practical solution to distinguish objects made of different materials, shapes, and compositions. In this work, radar classification of various materials is demonstrated using a broadband millimeter-wave CMOS integrated receiver. The receiver is used to record the transmitted power through multiple solid materials at various distances from the receiver in the W-band (75–110 GHz). Three supervised machine learning tools are trained by the recorded data to classify these materials into different categories. The trained classifiers were used to predict material and thickness of objects with varying distances from the receiver with accuracy levels of higher than 96% in material classification and 88% in thickness classification.
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基于宽带毫米波梳状接收机的智能材料分类与识别
毫米波雷达为区分由不同材料、形状和成分组成的物体提供了一种实用的解决方案。在这项工作中,使用宽带毫米波CMOS集成接收器演示了各种材料的雷达分类。接收机用于记录在w波段(75-110 GHz)通过多个固体材料在离接收机不同距离的发射功率。三种监督机器学习工具通过记录的数据进行训练,将这些材料分类为不同的类别。将训练好的分类器用于预测与接收器距离不同的物体的材料和厚度,材料分类的准确率高于96%,厚度分类的准确率高于88%。
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