Title :
Graphical Models for real-time capable gesture recognition
Author :
T. Rehr;N. Theißing;A. Bannat;J. Gast;D. Arsią;F. Wallhoff;G. Rigoll;C. Mayer;B. Radig
Author_Institution :
Human-Machine Communication, Department of Electrical Engineering and Information Technologies, Technische Universitä
Abstract :
In everyday live head gestures such as head shaking or nodding and hand gestures like pointing gestures form important aspects of human-human interaction. Therefore, recent research considers integrating these intuitive communication cues into technical systems for improving and easing human-computer interaction. In this paper we present a vision-based system to recognize head gestures (nodding, shaking, neutral) and dynamic hand gestures (hand moving right/left/up/down, fist moving right/left) in real-time. The gestural input delivers a communication modality for a human-robot interaction scenario situated in an assistive household environment. The use of fast low-level image-feature extraction methods contributes to the real-time capability of the system and advanced classification approaches relying on Graphical Models provide high robustness. Graphical Models offer the possibility to group the input features in several sub-nodes resulting in a better classification than obtained via a traditional Hidden Markov Model classification. The applied grouping can regard interdependencies owing to, either physical constraints (like for the head gestures), or interrelations between shape and motion (like for the hand gestures).
Keywords :
"Hidden Markov models","Head","Real time systems","Feature extraction","Graphical models","Shape","Gesture recognition"
Conference_Titel :
Image Processing (ICIP), 2010 17th IEEE International Conference on
Print_ISBN :
978-1-4244-7992-4
DOI :
10.1109/ICIP.2010.5651873