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A generative statistical model for tracking multiple smooth trajectories
Ernesto Brau
, Damayanthi Dunatunga
, Kobus Barnard
,
Tatsuya Tsukamoto
, Ravi Palanivelu
, Philip Lee
Genetics, Cell Biology and Development (CBS)
Research output
:
Chapter in Book/Report/Conference proceeding
›
Conference contribution
10
Scopus citations
Overview
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Keyphrases
Statistical Model
100%
Image Sequence
100%
Linear Dynamical Systems
100%
Smooth Trajectory
100%
Markov Chain Monte Carlo
50%
Tracker
50%
Complex Data
50%
Pollen Tube
50%
Data Association Method
50%
Multi-target
50%
Petri Dish
50%
Parametric Model
50%
Unknown Number
50%
Gibbs Sampling
50%
Gaussian Process
50%
Noise Points
50%
Motion Model
50%
Solution Space
50%
Simple Heuristics
50%
Kernel Function
50%
Movement Smoothness
50%
Multiple Crossing
50%
Computer Science
Image Sequence
100%
Statistical Model
100%
Dynamical System
100%
Modified Version
50%
Kernel Function
50%
Motion Model
50%
markov chain monte-carlo
50%
data association
50%
Parametric Model
50%
Solution Space
50%
Gibbs Free Energy
50%
Mathematics
Statistical Model
100%
Linear Dynamical Systems
100%
Probability Theory
50%
Markov Chain Monte Carlo
50%
Unknown Number
50%
Solution Space
50%
Gaussian Process
50%
Parametric Model
50%
data association
50%
Gibbs Free Energy
50%