Recognition of Deictic Gestures for Wearable Computing

Thomas B. Moeslund, Lau Nørgaard

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3 Citationer (Scopus)
336 Downloads (Pure)

Resumé

In modern society there is an increasing demand to access, record and manipulate large amounts of information. This has inspired a new approach to thinking about and designing personal computers, where the ultimate goal is to produce a truly wearable computer. In this work we present a non-invasive handgesture recognition system aimed at deictic gestures. Our system is based on the powerful Sequential Monte Carlo framework which is enhanced with respect to increased robustness. This is achieved by using ratios in the likelihood function together with two image cues: edges and skin color. The system proves to be fast, robust towards noise, and quick to lock on to the object (hand). All of which is achieved without the use of special lighting or special markers on the hands, hence our system is a non-invasive solution.

OriginalsprogEngelsk
TitelGesture in Human-Computer Interaction and Simulation
RedaktørerS. Gibet, N. Courty, J. F. Kamp
ForlagIEEE Computer Society Press
Publikationsdato2006
Sider112-123
ISBN (Trykt)3540326243
StatusUdgivet - 2006
BegivenhedRecognition of Deictic Gestures for Wearable Computing -
Varighed: 19 maj 2010 → …

Konference

KonferenceRecognition of Deictic Gestures for Wearable Computing
Periode19/05/2010 → …
NavnLecture Notes In Artificial Intelligence
Nummer3881
ISSN0302-9743

Fingerprint

Wearable computers
Personal computers
Skin
Lighting
Color

Citer dette

Moeslund, T. B., & Nørgaard, L. (2006). Recognition of Deictic Gestures for Wearable Computing. I S. Gibet, N. Courty, & J. F. Kamp (red.), Gesture in Human-Computer Interaction and Simulation (s. 112-123). IEEE Computer Society Press. Lecture Notes In Artificial Intelligence, Nr. 3881
Moeslund, Thomas B. ; Nørgaard, Lau. / Recognition of Deictic Gestures for Wearable Computing. Gesture in Human-Computer Interaction and Simulation. red. / S. Gibet ; N. Courty ; J. F. Kamp. IEEE Computer Society Press, 2006. s. 112-123 (Lecture Notes In Artificial Intelligence; Nr. 3881).
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Moeslund, TB & Nørgaard, L 2006, Recognition of Deictic Gestures for Wearable Computing. i S Gibet, N Courty & JF Kamp (red), Gesture in Human-Computer Interaction and Simulation. IEEE Computer Society Press, Lecture Notes In Artificial Intelligence, nr. 3881, s. 112-123, Recognition of Deictic Gestures for Wearable Computing, 19/05/2010.

Recognition of Deictic Gestures for Wearable Computing. / Moeslund, Thomas B.; Nørgaard, Lau.

Gesture in Human-Computer Interaction and Simulation. red. / S. Gibet; N. Courty; J. F. Kamp. IEEE Computer Society Press, 2006. s. 112-123 (Lecture Notes In Artificial Intelligence; Nr. 3881).

Publikation: Bidrag til bog/antologi/rapport/konference proceedingKonferenceartikel i proceedingForskningpeer review

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Moeslund TB, Nørgaard L. Recognition of Deictic Gestures for Wearable Computing. I Gibet S, Courty N, Kamp JF, red., Gesture in Human-Computer Interaction and Simulation. IEEE Computer Society Press. 2006. s. 112-123. (Lecture Notes In Artificial Intelligence; Nr. 3881).