Are mid-air dynamic gestures applicable to user identification?

•We investigate the feasibility of mid-air dynamic gesture based user identification by providing a Bi-GRU network.•We reveal the relationship between the gesture type features and the gesture user identity characteristics.•We explore the availability of ITQ hash coding on gesture based user identif...

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Veröffentlicht in:Pattern recognition letters 2019-01, Vol.117, p.179-185
Hauptverfasser: Liu, Heng, Dai, Liangliang, Hou, Shudong, Han, Jungong, Liu, Hongshen
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container_end_page 185
container_issue
container_start_page 179
container_title Pattern recognition letters
container_volume 117
creator Liu, Heng
Dai, Liangliang
Hou, Shudong
Han, Jungong
Liu, Hongshen
description •We investigate the feasibility of mid-air dynamic gesture based user identification by providing a Bi-GRU network.•We reveal the relationship between the gesture type features and the gesture user identity characteristics.•We explore the availability of ITQ hash coding on gesture based user identification and gesture classification.•We discuss the effect of different gestures on the performance of user identification through hash ITQ feature representation. Unlike the existing gesture related research predominantly focusing on gesture recognition (classification), this work explores the feasibility and the potential of mid-air dynamic gesture based user identification through presenting an efficient bidirectional GRU (Gated Recurrent Unit) network. From the perspective of the feature analysis from the Bi-GRU network used for different recognition tasks, we make a detailed investigation on the correlation and the difference between the gesture type features and the gesture user identity characteristics. During this process, two unsupervised feature representation methods – PCA and hash ITQ (Iterative Quantization) are fully used to perform feature reduction and feature binary coding. Experiments and analysis based on our dynamic gesture data set (60 individuals) exemplify the effectiveness of the proposed mid-air dynamic gesture based user identification approach and clearly reveal the relationship between the gesture type features and the gesture user identity characteristics.
doi_str_mv 10.1016/j.patrec.2018.04.026
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subjects Bi-GRU
Binary codes
Gesture based user identification
Gesture user identity characteristics
Mid-air dynamic gestures
title Are mid-air dynamic gestures applicable to user identification?
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