Title :
Extraction of 3D hand shape and posture from image sequences for sign language recognition
Author :
Fillbrandt, Holger ; Akyol, Suat ; Kraiss, Karl-Friedrich
Author_Institution :
Aachen Univ., Germany
Abstract :
We propose a novel method for extracting natural hand parameters from monocular image sequences. The purpose is to improve a vision-based sign language recognition system by providing detail information about the finger constellation and the 3D hand posture. Therefore, the hand is modelled by a set of 2D appearance models, each representing a limited variation range of 3D hand shape and posture. The single models are linked to each other according to the natural neighbourhood of the corresponding hand status. During an image sequence, necessary model transitions are executed towards one of the current neighbour models. The natural hand parameters are calculated from the shape and texture parameters of the current model, using a relation estimated by linear regression. The method is robust against large differences between subsequent frames and also against poor image quality. It can be implemented in real-time and offers good properties to handle occlusion and partly missing image information.
Keywords :
computer vision; feature extraction; gesture recognition; hidden feature removal; image sequences; image texture; regression analysis; 2D appearance model transitions; 3D hand posture; 3D hand shape extraction; finger constellation; image information; image quality; linear regression; monocular image sequences; natural hand parameters; occlusion handling; vision-based sign language recognition system; Data mining; Fingers; Handicapped aids; Image quality; Image recognition; Image sequences; Linear regression; Robustness; Shape;
Conference_Titel :
Analysis and Modeling of Faces and Gestures, 2003. AMFG 2003. IEEE International Workshop on
Print_ISBN :
0-7695-2010-3
DOI :
10.1109/AMFG.2003.1240841