a.k.a. Sequential Monte Carlo Methods
- Non parametric Bayesian filter
- Represent arbitrary probability distributions
 - more complex pdf
 - Represent state distribution non-parametrically
 
 - Recursive non-linear discrete time estimation
- can be used for non-linear motion
 
 - Use n particles to represent distribution over hidden states
- use sampling to propagate densities over time
 - e.g. across frames in a video sequence
 
 - At each time step, represent posterior P(Xt |Yt ) with weighted sample set
 - Previous time step’s sample set P(Xt-1|Yt-1) is passed to next time step as the effective prior
 - Transition
- sample next state for each particle
 
 - Evidence
- weight samples based on evidence
 
 - Resample
- generate a new distribution of particles
 
 
Pros
- non linear systems
 - Efficient: particles tend to focus on regions with high probability
 
Cons
- Want as few particles as possible for efficiency, but need to cover state space sufficiently well
 - interactions between multiple objects require special treatment
- Multimodal densities possible
 - Not handled well in the particle filtering framework