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Dop-DenseNet: Densely Convolutional Neural Network-Based Gesture Recognition Using a Micro-Doppler Radar

Hai Hoang Le, Van‐Phuc Hoang, Van‐Sang Doan, Le Dai Phong

2022Journal of Electromagnetic Engineering and Science14 citationsDOIOpen Access PDF

Abstract

Hand gesture recognition is an efficient and practical solution for the non-contact human–machine interaction in smart devices. To date, vision-based methods are widely used in this research area, but they are susceptible to light conditions. To address this issue, radar-based gesture recognition using micro-Doppler signatures can be applied as an alternative. Accordingly, the use of a novel densely convolutional neural network model, Dop-DenseNet, is proposed in this paper for improving hand gesture recognition in terms of classification accuracy and latency. The model was designed with cross or skip connections in a dense architecture so that the former features, which can be lost in the forward-propagation process, can be reused. We evaluated our model with different numbers of filter channels and experimented with it using the Dop-Net dataset, with different time lengths of input data. As a result, it was found that the model with 64 3 × 3 filters and 200 time bins of micro-Doppler spectrogram data could achieve the best performance trade-off, with 99.87% classification accuracy and 3.1 ms latency. In comparison, our model remarkably outperformed the selected state-of-the-art neural networks (GoogLeNet, Res- Net-50, NasNet-Mobile, and MobileNet-V2) using the same Dop-Net dataset.

Topics & Concepts

Computer scienceConvolutional neural networkSpectrogramArtificial intelligenceLatency (audio)RadarPattern recognition (psychology)Gesture recognitionGestureArtificial neural networkSpeech recognitionTelecommunicationsHand Gesture Recognition SystemsAdvanced SAR Imaging TechniquesGait Recognition and Analysis
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