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Multi-scale Visual Tracking by Sequential Belief Propagation

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Monte Carlo implementation. A set of collaborative particle filters. 10/26/09. CVPR'2004 ... A sequential BP algorithm with Monte Carlo. Future work ... – PowerPoint PPT presentation

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Title: Multi-scale Visual Tracking by Sequential Belief Propagation


1
Multi-scale Visual Tracking by Sequential Belief
Propagation
Gang Hua, Ying Wu Dept. Electrical Computer
Engr. Northwestern University Evanston, IL
60208 yingwu,ganghua_at_ece.northwestern.edu
2
Abrupt Motion
  • sudden changes of target dynamics
  • frame dropping
  • large camera motion
  • etc.

3
Challenges
  • Most existing visual tracking methods assume
    either small motion or accurate motion models
  • Abrupt motion violates them
  • Hierarchical search is not enough
  • Unidirectional information flow
  • Error accumulation from coarse to fine
  • No mechanism to recover failure in coarse scales

4
Our Idea
  • Different scales provide different salient visual
    features
  • Bi-directional information flow among different
    scales should help
  • Different scales collaborate

5
Our Formulation
  • A Markov network
  • XXi ,i1..Ltarget state in different scales
  • ZZi ,i1..LImage observation of the target in
    different scales
  • Undirected link Potential function
    ?ij(fi(Xi),fj(Xj)),
  • Directed linkObservation function Pi(ZiXi)
  • The task is to infer Pi (XiZ), i1..L

Fig.1. Markov Network (MN)
6
Belief propagation (BP)
  • The joint posterior
  • Belief propagation Pearl88, Freeman99

7
Dynamic Markov Network
  • XtXt,i ,i1..LTarget states at time t
  • ZtZt,i ,i1..LImage observations at time t
  • P(Xt,iXt-1,i)Dynamic model in the ith scale
  • ZtZk, k1..tImage observation up to time t

Fig.2. Dynamic Markov Network (DMN) modeling
target dynamics
8
Bayesian inference in DMN
  • Markovian assumption
  • The Bayesian inference is
  • Independent dynamics model

9
Sequential BP
  • Message Passing in DMN
  • Belief update in DMN

10
Sequential BP Monte Carlo
  • To handle non-Gaussian densities
  • Monte Carlo implementation
  • A set of collaborative particle filters

11
Algorithm
12
Experiments bouncing ball
  • Sudden dynamics changes fail the single particle
    filters
  • The tracking result of the Sequential BP

13
Experiments dropping frames
  • Dropping 9/10 of the video frames
  • BP iteration at a specific time instant

14
Experiments shaking camera
15
Experiments scale changes
16
Conclusion future work
  • Contributions
  • A new multi-scale tracking approach
  • A rigorous statistical formulation
  • A sequential BP algorithm with Monte Carlo
  • Future work
  • Theoretic study comparison of the BP with the
    mean field variational approach
  • Learning model parameters
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