Highly-Optimized Radar-Based Gesture Recognition System with Depthwise Expansion Module
Metadatos
Afficher la notice complèteEditorial
MDPI
Materia
Edge computing Edge TPU Optimization Quantization FMCW Radar Deep learning Neural networks
Date
2021Referencia bibliográfica
Chmurski, M.; Mauro, G.; Santra, A.; Zubert, M.; Dagasan, G. Highly-Optimized Radar-Based Gesture Recognition System with Depthwise Expansion Module. Sensors 2021, 21, 7298. https:// doi.org/10.3390/s21217298
Patrocinador
Electronic Components and Systems for European Leadership Joint Undertaking under grant agreement No. 826655 (Tempo).; European Union’s Horizon 2020 research and innovation programme and Belgium, France, Germany, Switzerland, and the Netherlands; Lodz University of Technology.Résumé
The increasing integration of technology in our daily lives demands the development of
more convenient human–computer interaction (HCI) methods. Most of the current hand-based HCI
strategies exhibit various limitations, e.g., sensibility to variable lighting conditions and limitations
on the operating environment. Further, the deployment of such systems is often not performed
in resource-constrained contexts. Inspired by the MobileNetV1 deep learning network, this paper
presents a novel hand gesture recognition system based on frequency-modulated continuous wave
(FMCW) radar, exhibiting a higher recognition accuracy in comparison to the state-of-the-art systems.
First of all, the paper introduces a method to simplify radar preprocessing while preserving the main
information of the performed gestures. Then, a deep neural classifier with the novel Depthwise
Expansion Module based on the depthwise separable convolutions is presented. The introduced
classifier is optimized and deployed on the Coral Edge TPU board. The system defines and adopts
eight different hand gestures performed by five users, offering a classification accuracy of 98.13%
while operating in a low-power and resource-constrained environment.