TY - CONF Y1 - 2011/// SN - 9781612846903 A1 - Salih, Y. A1 - Malik, A.S. UR - https://www.scopus.com/inward/record.uri?eid=2-s2.0-80052135233&doi=10.1109%2fISCI.2011.5958966&partnerID=40&md5=b1d8077df8f480f47948356cd9e39a75 EP - 505 CY - Kuala Lumpur AV - none N2 - In the recent years, 3D tracking has gained attention due to the perforation of powerful computers and the increasing interest in tracking applications. One of the most common tracking algorithms used is the Kalman filter. Kalman filter is a linear estimator that is based on approximating system's dynamics using Gaussian probability distribution. In this paper, we provide a detailed evaluation of the most common Kalman filters, their use in the literature and their implementation for 3D visual tracking. The main types of Kalman filters discussed are linear Kalman filter, extended Kalman filer and unscented Kalman filter. © 2011 IEEE. N1 - cited By 5; Conference of 2011 IEEE Symposium on Computers and Informatics, ISCI 2011 ; Conference Date: 20 March 2011 Through 22 March 2011; Conference Code:86204 TI - 3D object tracking using three Kalman filters ID - scholars1931 SP - 501 KW - 3D object tracking; 3D tracking; EKF; Gaussian probability distributions; Linear estimators; Linear Kalman filters; LKF; System's dynamics; Tracking algorithm; Tracking application; UKF; Unscented Kalman Filter; Visual Tracking KW - Information science; Probability distributions; Three dimensional; Tracking (position) KW - Kalman filters ER -