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Conference Paper

Towards automatic gesture stroke detection

MPS-Authors
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Gebre,  Binyam Gebrekidan
The Language Archive, MPI for Psycholinguistics, Max Planck Society;

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Wittenburg,  Peter
The Language Archive, MPI for Psycholinguistics, Max Planck Society;

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Lenkiewicz,  Przemyslaw
The Language Archive, MPI for Psycholinguistics, Max Planck Society;

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Gebre_LREC_2012.pdf
(Publisher version), 766KB

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Citation

Gebre, B. G., Wittenburg, P., & Lenkiewicz, P. (2012). Towards automatic gesture stroke detection. In N. Calzolari (Ed.), Proceedings of LREC 2012: 8th International Conference on Language Resources and Evaluation (pp. 231-235). European Language Resources Association.


Cite as: https://hdl.handle.net/11858/00-001M-0000-000F-8479-7
Abstract
Automatic annotation of gesture strokes is important for many gesture and sign language researchers. The unpredictable diversity of human gestures and video recording conditions require that we adopt a more adaptive case-by-case annotation model. In this paper, we present a work-in progress annotation model that allows a user to a) track hands/face b) extract features c) distinguish strokes from non-strokes. The hands/face tracking is done with color matching algorithms and is initialized by the user. The initialization process is supported with immediate visual feedback. Sliders are also provided to support a user-friendly adjustment of skin color ranges. After successful initialization, features related to positions, orientations and speeds of tracked hands/face are extracted using unique identifiable features (corners) from a window of frames and are used for training a learning algorithm. Our preliminary results for stroke detection under non-ideal video conditions are promising and show the potential applicability of our methodology.