Comparison of the Hopfield neural network versus optimal control theory for the data association portion of the multitarget tracking problem
Considerably attention has been focused lately on using neural networks to optimize the solution to data association. A neural network has been shown to provide a good approximation to the joint proba...
Active camera control from compressed image streams
In this paper we describe a new framework to control an active camera platform in order to improve the performance of tasks such as active stereo vision. This framework encompasses both calibrated and...
Tracker fusion for robustness in visual feature tracking
Proc. SPIE, Vol. 2589, 38 (1995);
doi:10.1117/12.220965
Online Publication Date: 18 November 2004
Conference Date: Monday 23 October 1995
Conference Location: Philadelphia, PA, USA
Conference Title: Sensor Fusion and Networked Robotics VIII
Conference Chairs: Paul S. Schenker, Gerard T. McKee
Task-directedvision obviates the need for general image comprehension by focusingattention only on features which contribute useful information to thetask at hand. Window-based visual tracking fits into this paradigmas motion tracking becomes a problem of local search ina small image region. While the gains in speed fromsuch methods allow for real-time feature tracking on off-the-shelf hardware,they lose robustness by giving up a more global perspective:Window-based feature trackers are prone to such problems as distraction,illumination changes, fast features, and so forth. To add robustnessto feature tracking, we present `tracker fusion,' where multiple trackerssimultaneously track the same feature while watching for various problematiccircumstances and combine their estimates in a meaningful way. Bycategorizing different situations in which mistracking occurs, finding appropriate trackersto deal with each such situation, and fusing the resultingtrackers together, we construct robust feature trackers which maintain thespeed of simple window-based trackers, yet afford greater resistance tomistracking.