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Contactless Material Identification with Millimeter Wave Vibrometry

Hailan Shanbhag, Sohrab Madani, Akhil Isanaka, Deepak Nair, Saurabh Gupta, Haitham Hassanieh

202323 citationsDOI

Abstract

This paper introduces RFVibe, a system that enables contactless material and object identification through the fusion of millimeter wave wireless signals with acoustic signals. In particular, RFVibe plays an audio sound next to the object that generates micro-vibrations in the object. These micro-vibrations can be captured by shining a millimeter wave radar signal on the object and analyzing the phase of the reflected wireless signal. RFVibe can then extract several features including resonance frequencies and vibration modes, damping time of vibrations, and wireless reflection coefficients. These features are then used to enable more accurate identification, with a step towards generalizing towards different setups and locations. We implement RFVibe using an off-the-shelf millimeter-wave radar and an acoustic speaker. We evaluate it on 23 objects of 7 material types (Metal, Wood, Ceramic, Glass, Plastic, Cardboard, and Foam), obtaining 81.3% accuracy for material classification, a 30% improvement over prior work. RFVibe is able to classify with reasonable accuracy in scenarios that it has not encountered before, including different locations, angles, boundary conditions, and objects.

Topics & Concepts

AcousticsExtremely high frequencyRadarVibrationComputer scienceSIGNAL (programming language)MillimeterReflection (computer programming)Identification (biology)WirelessPhysicsOpticsTelecommunicationsBiologyBotanyProgramming languageGeophysical Methods and ApplicationsIndoor and Outdoor Localization TechnologiesSpeech and Audio Processing