Short-Range Radar-Based Gesture Recognition System Using 3D CNN With Triplet Loss

Gesture recognition is the most intuitive form of human computer-interface. Gesture sensing can replace interfaces such as touch and clicks needed for interacting with a device. Gesture recognition in a practical scenario is an open-set classification, i.e. the recognition system should classify cor...

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Main Authors: Souvik Hazra, Avik Santra
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8821302/
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spelling doaj-d4082016fc6745808c6e528a15e14f012021-03-29T23:21:14ZengIEEEIEEE Access2169-35362019-01-01712562312563310.1109/ACCESS.2019.29387258821302Short-Range Radar-Based Gesture Recognition System Using 3D CNN With Triplet LossSouvik Hazra0Avik Santra1https://orcid.org/0000-0002-8156-3387Infineon Technologies AG, Neubiberg, GermanyInfineon Technologies AG, Neubiberg, GermanyGesture recognition is the most intuitive form of human computer-interface. Gesture sensing can replace interfaces such as touch and clicks needed for interacting with a device. Gesture recognition in a practical scenario is an open-set classification, i.e. the recognition system should classify correct known gestures while rejecting arbitrary unknown gestures during inference. To address the issue of gesture recognition in an open set, we present, in this paper, a novel distance-metric based meta-learning approach to learn embedding features from a video of range-Doppler images generated by hand gestures at the radar receiver. Further, k-Nearest Neighbor (kNN) is used to classify known gestures, distance-thresholding is used to reject unknown gesture motions and clustering is used to add new custom gestures on-the-fly without explicit model re-training. We propose to use 3D Deep Convolutional Neural Network (3D-DCNN) architecture to learn the embedding model using distance-based triplet-loss similarity metric. We demonstrate our approach to correctly classify gestures using short-range 60-GHz compact short-range radar sensor achieving an overall classification accuracy of 94.5% over six fine-grained gestures under challenging practical environments, while rejecting other unknown gestures with 0.935 F1 score, and capable of adding new gestures on-the-fly without an explicit model re-training.https://ieeexplore.ieee.org/document/8821302/Gesture recognitionhuman-machine interfacemm-wave radartriplet loss
collection DOAJ
language English
format Article
sources DOAJ
author Souvik Hazra
Avik Santra
spellingShingle Souvik Hazra
Avik Santra
Short-Range Radar-Based Gesture Recognition System Using 3D CNN With Triplet Loss
IEEE Access
Gesture recognition
human-machine interface
mm-wave radar
triplet loss
author_facet Souvik Hazra
Avik Santra
author_sort Souvik Hazra
title Short-Range Radar-Based Gesture Recognition System Using 3D CNN With Triplet Loss
title_short Short-Range Radar-Based Gesture Recognition System Using 3D CNN With Triplet Loss
title_full Short-Range Radar-Based Gesture Recognition System Using 3D CNN With Triplet Loss
title_fullStr Short-Range Radar-Based Gesture Recognition System Using 3D CNN With Triplet Loss
title_full_unstemmed Short-Range Radar-Based Gesture Recognition System Using 3D CNN With Triplet Loss
title_sort short-range radar-based gesture recognition system using 3d cnn with triplet loss
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Gesture recognition is the most intuitive form of human computer-interface. Gesture sensing can replace interfaces such as touch and clicks needed for interacting with a device. Gesture recognition in a practical scenario is an open-set classification, i.e. the recognition system should classify correct known gestures while rejecting arbitrary unknown gestures during inference. To address the issue of gesture recognition in an open set, we present, in this paper, a novel distance-metric based meta-learning approach to learn embedding features from a video of range-Doppler images generated by hand gestures at the radar receiver. Further, k-Nearest Neighbor (kNN) is used to classify known gestures, distance-thresholding is used to reject unknown gesture motions and clustering is used to add new custom gestures on-the-fly without explicit model re-training. We propose to use 3D Deep Convolutional Neural Network (3D-DCNN) architecture to learn the embedding model using distance-based triplet-loss similarity metric. We demonstrate our approach to correctly classify gestures using short-range 60-GHz compact short-range radar sensor achieving an overall classification accuracy of 94.5% over six fine-grained gestures under challenging practical environments, while rejecting other unknown gestures with 0.935 F1 score, and capable of adding new gestures on-the-fly without an explicit model re-training.
topic Gesture recognition
human-machine interface
mm-wave radar
triplet loss
url https://ieeexplore.ieee.org/document/8821302/
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