DocumentCode
2920982
Title
A generative statistical model for tracking multiple smooth trajectories
Author
Brau, Ernesto ; Barnard, Kobus ; Palanivelu, Ravi ; Dunatunga, Damayanthi ; Tsukamoto, Tatsuya ; Lee, Philip
Author_Institution
Comput. Sci., Univ. of Arizona, Tucson, AZ, USA
fYear
2011
fDate
20-25 June 2011
Firstpage
1137
Lastpage
1144
Abstract
We present a general model for tracking smooth trajectories of multiple targets in complex data sets, where tracks potentially cross each other many times. As the number of overlapping trajectories grows, exploiting smoothness becomes increasingly important to disambiguate the association of successive points. However, in many important problems an effective parametric model for the trajectories does not exist. Hence we propose modeling trajectories as independent realizations of Gaussian processes with kernel functions which allow for arbitrary smooth motion. Our generative statistical model accounts for the data as coming from an unknown number of such processes, together with expectations for noise points and the probability that points are missing. For inference we compare two methods: A modified version of the Markov chain Monte Carlo data association (MCMCDA) method, and a Gibbs sampling method which is much simpler and faster, and gives better results by being able to search the solution space more efficiently. In both cases, we compare our results against the smoothing provided by linear dynamical systems (LDS). We test our approach on videos of birds and fish, and on 82 image sequences of pollen tubes growing in a petri dish, each with up to 60 tubes with multiple crossings. We achieve 93% accuracy on image sequences with up to ten trajectories (35 sequences) and 88% accuracy when there are more than ten (42 sequences). This performance surpasses that of using an LDS motion model, and far exceeds a simple heuristic tracker.
Keywords
Gaussian processes; Markov processes; Monte Carlo methods; image motion analysis; image sequences; smoothing methods; statistical distributions; target tracking; video signal processing; Gaussian process; Gibbs sampling method; LDS motion model; Markov chain Monte Carlo data association method; arbitrary smooth motion; complex data set; generative statistical model; heuristic tracker; image sequence; kernel function; linear dynamical system smoothing; modeling trajectory; multiple smooth trajectory tracking; multiple target; noise point; overlapping trajectory; pollen tube; Electron tubes; Gaussian processes; Markov processes; Noise; Target tracking; Trajectory;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition (CVPR), 2011 IEEE Conference on
Conference_Location
Providence, RI
ISSN
1063-6919
Print_ISBN
978-1-4577-0394-2
Type
conf
DOI
10.1109/CVPR.2011.5995736
Filename
5995736
Link To Document