A novel system for automatic hand gesture spotting and recognition in stereo color image sequences
Date issued
2009
Journal Title
Journal ISSN
Volume Title
Publisher
Václav Skala - UNION Agency
Abstract
Automatic gesture spotting and recognition is a challenging task for locating the start and end points that
correspond to a gesture of interest in Human-Computer Interaction. This paper proposes a novel gesture spotting
system that is suitable for real-time implementation. The system executes gesture segmentation and recognition
simultaneously without any time delay based on Hidden Markov Models. In the segmentation module, the hand
of the user is tracked using mean-shift algorithm, which is a non-parametric density estimator that optimizes the
smooth similarity function to find the direction of hand gesture path. In order to spot key gesture accurately, a
sophisticated method for designing a non-gesture model is proposed, which is constructed by collecting the
states of all gesture models in the system. The non-gesture model is a weak model compared to all trained
gesture models. Therefore, it provides a good confirmation for rejecting the non-gesture pattern. To reduce the
states of the non-gesture model, similar probability distributions states are merged based on relative entropy
measure. Experimental results show that the proposed system can automatically recognize isolated gestures with
97.78% and key gestures with 93.31% reliability for Arabic numbers from 0 to 9.
Description
Subject(s)
rozpoznávání gest, rozpoznávání vzorů, počítačové vidění
Citation
Journal of WSCG. 2009, vol. 17, no. 1-3, p. 89-96.