Personalized Gestures Through Motion Transfer: Protecting Privacy in Pervasive Surveillance
Loading...
Access rights
openAccess
URL
Journal Title
Journal ISSN
Volume Title
A1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä
This publication is imported from Aalto University research portal.
View publication in the Research portal (opens in new window)
View/Open full text file from the Research portal (opens in new window)
Other link related to publication (opens in new window)
View publication in the Research portal (opens in new window)
View/Open full text file from the Research portal (opens in new window)
Other link related to publication (opens in new window)
Authors
Date
2022
Major/Subject
Mcode
Degree programme
Language
en
Pages
9
1-9
1-9
Series
IEEE Pervasive Computing
Abstract
With the growing ubiquitousness of pervasive sensing and toward ambient intelligence, pervasive surveillance becomes a very real privacy threat, where private gesture interaction is likely to be observed and automatically interpreted by other (even benign) pervasive intelligence tools. We propose motion transfer, the example-guided modification of motion to translate from default motion and gesture interaction alphabets to personal ones. Apart from privacy, incentive to use personalized gesture interaction alphabets include convenience as well as physical handicaps (i.e., inability to conduct certain movements). We demonstrate the concept using motion transfer in RGB-video data. We further show that the approach is feasible also for point-cloud-based gesture recognition methods. In particular, we implemented an end-to-end model for human motion transfer with 3D (<italic>x</italic>-<italic>y</italic>-time) or 4D (<italic>x</italic>-<italic>y</italic>-<italic>z</italic>-time) point-cloud datasets. Point-cloud-based motion transfer is a privacy protecting way of customizing gestures to control devices, hence lowering the risk of disclosing the nature of interaction to surrounding pervasive surveillance installations.Description
Publisher Copyright: IEEE
Keywords
Decoding, Drones, Privacy, Sensors, Shape, Three-dimensional displays, Training
Other note
Citation
Zuo, S & Sigg, S 2022, ' Personalized Gestures Through Motion Transfer : Protecting Privacy in Pervasive Surveillance ', IEEE Pervasive Computing, vol. 21, no. 4, pp. 8-16 . https://doi.org/10.1109/MPRV.2022.3210156