Title :
Tracking Head Yaw by Interpolation of Template Responses
Author :
Romero, Mario ; Bobick, Aaron
Author_Institution :
Georgia Institute of Technology, Atlanta
Abstract :
We propose an appearance based machine learning architecture that estimates and tracks in real time large range head yaw given a single non-calibrated monocular grayscale low resolution image sequence of the head. The architecture is composed of five parallel template detectors, a Radial Basis Function Network and two Kalman filters. The template detectors are five view-specific images of the head ranging across full profiles in discrete steps of 45 degrees. The Radial Basis Function Network interpolates the response vector from the normalized correlation of the input image and the 5 template detectors. The first Kalman filter models the position and velocity of the response vector in five dimensional space. The second is a running average that filters the scalar output of the network. We assume the head image has been closely detected and segmented, that it undergoes only limited roll and pitch and that there are no sharp contrasts in illumination. The architecture is person-independent and is robust to changes in appearance, gesture and global illumination. The goals of this paper are, one, to measure the performance of the architecture, two, to asses the impact the temporal information gained from video has on accuracy and stability and three, to determine the effects of relaxing our assumptions.
Keywords :
Detectors; Filters; Gray-scale; Image resolution; Image sequences; Interpolation; Lighting; Machine learning; Magnetic heads; Radial basis function networks;
Conference_Titel :
Computer Vision and Pattern Recognition Workshop, 2004. CVPRW '04. Conference on
DOI :
10.1109/CVPR.2004.194