No Interface, No Problem: Gesture Recognition on Physical Objects Using Radar Sensing

Physical objects are usually not designed with interaction capabilities to control digital content. Nevertheless, they provide an untapped source for interactions since every object could be used to control our digital lives. We call this <i>the missing interface</i> problem: Instead of...

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Main Authors: Nuwan T. Attygalle, Luis A. Leiva, Matjaž Kljun, Christian Sandor, Alexander Plopski, Hirokazu Kato, Klen Čopič Pucihar
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/17/5771
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spelling doaj-c2021627098f4248827953ade2d682732021-09-09T13:56:09ZengMDPI AGSensors1424-82202021-08-01215771577110.3390/s21175771No Interface, No Problem: Gesture Recognition on Physical Objects Using Radar SensingNuwan T. Attygalle0Luis A. Leiva1Matjaž Kljun2Christian Sandor3Alexander Plopski4Hirokazu Kato5Klen Čopič Pucihar6Faculty of Mathematics, Natural Sciences and Information Technologies (FAMNIT), University of Primorska, Glagoljaška 8, 6000 Koper, SloveniaDepartment of Computer Science, University of Luxembourg, Maison du Nombre 6, Avenue de la Fonte, L-4364 Esch-sur-Alzette, LuxembourgFaculty of Mathematics, Natural Sciences and Information Technologies (FAMNIT), University of Primorska, Glagoljaška 8, 6000 Koper, SloveniaSchool of Creative Media, City University of Hong Kong, Hong Kong, ChinaDepartment of Information Science, University of Otago, P.O. Box 56, Dunedin 9054, New ZealandGraduate School of Science and Technology, Nara Institute of Science and Technology, Takayama 8916-5, Ikoma, Nara, JapanFaculty of Mathematics, Natural Sciences and Information Technologies (FAMNIT), University of Primorska, Glagoljaška 8, 6000 Koper, SloveniaPhysical objects are usually not designed with interaction capabilities to control digital content. Nevertheless, they provide an untapped source for interactions since every object could be used to control our digital lives. We call this <i>the missing interface</i> problem: Instead of embedding computational capacity into objects, we can simply detect users’ gestures on them. However, gesture detection on such unmodified objects has to date been limited in the spatial resolution and detection fidelity. To address this gap, we conducted research on micro-gesture detection on physical objects based on Google Soli’s radar sensor. We introduced two novel deep learning architectures to process range Doppler images, namely a three-dimensional convolutional neural network (Conv3D) and a spectrogram-based ConvNet. The results show that our architectures enable robust on-object gesture detection, achieving an accuracy of approximately 94% for a five-gesture set, surpassing previous state-of-the-art performance results by up to 39%. We also showed that the decibel (dB) Doppler range setting has a significant effect on system performance, as accuracy can vary up to 20% across the dB range. As a result, we provide guidelines on how to best calibrate the radar sensor.https://www.mdpi.com/1424-8220/21/17/5771radar sensinggesture recognitiondeep learninghuman factors
collection DOAJ
language English
format Article
sources DOAJ
author Nuwan T. Attygalle
Luis A. Leiva
Matjaž Kljun
Christian Sandor
Alexander Plopski
Hirokazu Kato
Klen Čopič Pucihar
spellingShingle Nuwan T. Attygalle
Luis A. Leiva
Matjaž Kljun
Christian Sandor
Alexander Plopski
Hirokazu Kato
Klen Čopič Pucihar
No Interface, No Problem: Gesture Recognition on Physical Objects Using Radar Sensing
Sensors
radar sensing
gesture recognition
deep learning
human factors
author_facet Nuwan T. Attygalle
Luis A. Leiva
Matjaž Kljun
Christian Sandor
Alexander Plopski
Hirokazu Kato
Klen Čopič Pucihar
author_sort Nuwan T. Attygalle
title No Interface, No Problem: Gesture Recognition on Physical Objects Using Radar Sensing
title_short No Interface, No Problem: Gesture Recognition on Physical Objects Using Radar Sensing
title_full No Interface, No Problem: Gesture Recognition on Physical Objects Using Radar Sensing
title_fullStr No Interface, No Problem: Gesture Recognition on Physical Objects Using Radar Sensing
title_full_unstemmed No Interface, No Problem: Gesture Recognition on Physical Objects Using Radar Sensing
title_sort no interface, no problem: gesture recognition on physical objects using radar sensing
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-08-01
description Physical objects are usually not designed with interaction capabilities to control digital content. Nevertheless, they provide an untapped source for interactions since every object could be used to control our digital lives. We call this <i>the missing interface</i> problem: Instead of embedding computational capacity into objects, we can simply detect users’ gestures on them. However, gesture detection on such unmodified objects has to date been limited in the spatial resolution and detection fidelity. To address this gap, we conducted research on micro-gesture detection on physical objects based on Google Soli’s radar sensor. We introduced two novel deep learning architectures to process range Doppler images, namely a three-dimensional convolutional neural network (Conv3D) and a spectrogram-based ConvNet. The results show that our architectures enable robust on-object gesture detection, achieving an accuracy of approximately 94% for a five-gesture set, surpassing previous state-of-the-art performance results by up to 39%. We also showed that the decibel (dB) Doppler range setting has a significant effect on system performance, as accuracy can vary up to 20% across the dB range. As a result, we provide guidelines on how to best calibrate the radar sensor.
topic radar sensing
gesture recognition
deep learning
human factors
url https://www.mdpi.com/1424-8220/21/17/5771
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