Title :
Manifold Learning for Object Tracking With Multiple Nonlinear Models
Author :
Nascimento, Jacinto C. ; Silva, Jesus G. ; Marques, Jorge S. ; Lemos, Joao M.
Author_Institution :
Inst. de Sist. e Robot., Inst. Super. Tecnico, Lisbon, Portugal
Abstract :
This paper presents a novel manifold learning algorithm for high-dimensional data sets. The scope of the application focuses on the problem of motion tracking in video sequences. The framework presented is twofold. First, it is assumed that the samples are time ordered, providing valuable information that is not presented in the current methodologies. Second, the manifold topology comprises multiple charts, which contrasts to the most current methods that assume one single chart, being overly restrictive. The proposed algorithm, Gaussian process multiple local models (GP-MLM), can deal with arbitrary manifold topology by decomposing the manifold into multiple local models that are probabilistic combined using Gaussian process regression. In addition, the paper presents a multiple filter architecture where standard filtering techniques are integrated within the GP-MLM. The proposed approach exhibits comparable performance of state-of-the-art trackers, namely multiple model data association and deep belief networks, and compares favorably with Gaussian process latent variable models. Extensive experiments are presented using real video data, including a publicly available database of lip sequences and left ventricle ultrasound images, in which the GP-MLM achieves state of the art results.
Keywords :
Gaussian processes; object tracking; regression analysis; video signal processing; GP-MLM; Gaussian process latent variable models; Gaussian process multiple local models; Gaussian process regression; deep belief networks; high dimensional data sets; left ventricle ultrasound images; lip sequences; manifold learning algorithm; manifold topology; motion tracking; multiple charts; multiple filter architecture; multiple model data association; multiple nonlinear models; object tracking; publicly available database; real video data; standard filtering; video sequences; Estimation; Gaussian processes; Kernel; Manifolds; Principal component analysis; Trajectory; Vectors; Manifold learning; multiple dynamics; tangent bundle; tracking;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2014.2303652