Title of article :
Unscented feature tracking
Author/Authors :
Dorini، نويسنده , , Leyza Baldo and Goldenstein، نويسنده , , Siome Klein، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Accurate feature tracking is the foundation of many high level tasks in computer vision, such as 3D reconstruction and motion analysis. Although there are many feature tracking algorithms, most of them do not maintain information about the error of the data being tracked. Also, due to the difficulty and spatial locality of the problem, existing methods can generate grossly incorrect correspondences, making outlier rejection an essential post-processing step. We propose a new generic framework that uses the Scaled Unscented Transform to augment arbitrary feature tracking algorithms, and use Gaussian Random Variables (GRV) for the representation of features’ locations uncertainties. We apply and validate the framework on the well-understood Kanade–Lucas–Tomasi feature tracker, and call it Unscented KLT (UKLT). The UKLT tracks GRVs and rejects incorrect correspondences, without a global model of motion. We validate our method on real and synthetic sequences, and demonstrate how the UKLT outperforms other approaches on both outlier rejection and the accuracy of feature locations.
Keywords :
Outlier rejection , Uncertainty tracking , Statistical correspondences , feature tracking
Journal title :
Computer Vision and Image Understanding
Journal title :
Computer Vision and Image Understanding