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The Gaussian Mixture Probability Hypothesis Density filter, GMPHD python implementation

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The Gaussian Mixture Probability Hypothesis Density filter. Python implementation

It's based on "The Gaussian mixture probability hypothesis density filter" by Vo and Ma. For performance evaulation, OSPA metric is provided.

For the ones who want to have better understanding of the algorithm, I highly recommend the paper "Derivation of the PHD and CPHD Filters Based on Direct Kullback–Leibler Divergence Minimization" by García-Fernández and Vo.

The file examples.py contains two simulation examples.

Example 1

The first is actually a replica of the example in "Bayesian Multiple Target Filtering Using Random Finite Sets" by Vo, Vo, Clark used for performance evaulation of GMPHD filter. Targets lifes are based on Matlab code provided by Vo in http://ba-tuong.vo-au.com/codes.html and example doesn't contain target spawning.

Example 2

The second example is based on the simulation example in "The Gaussian mixture probability hypothesis density filter" by Vo and Ma. Also, this example demonstrates the spawning situation.

Simulation process and usage

The simulation steps are the following:

  • Define the details of the process model:
    model = process_model_for_example_1()
  • Create the objects for description of the targets birth timestamps, death timestamps and starting positions. Then generate trajectories based on the model and the given targets life description:
    targets_birth_time, targets_death_time, targets_start = example1(model['num_scans'])
    trajectories, targets_tracks = generate_trajectories(model, targets_birth_time, targets_death_time, targets_start,
                                                         noise=False)

In the provided two simulation examples, targets are moving with the constant velocity, but we can make them move randomly in the observation area by setting the noise parameter true.

  • Generate measurements based on the target trajectories. Because in real situations the sensor observations are noisy, in this step we just add the measurement noise for simulation purposes:
    data = generate_measurements(model, trajectories)

The data is list of collections of observations in each time step. For real filtering process, this will be the input from our sensors.

  • Filter the measurement data with GMPHD filter. Filter also needs to know assumed process model, which is provided by creation of the filter object.
    gmphd = GmphdFilter(model)
    X_collection = gmphd.filter_data(data)

All about the creation of the simulation process and running examples is in examples.py file. To switch between the two examples, just toggle comments at the beggining of the main function.

Monte Carlo simulations

To measure the performance of the GMPHD filter, the averaged OSPA metric is used from "A consistent metric for performance evaluation of multi-object filters", by D. Schuhmacher, B.-T. Vo, and B.-N. Vo.

in monte_carlo_simulations_and_plots_of_results.py you can run Monte Corle simulations, which is implemented in MC_run() function. These simulations can last quite long, and that is why the result is saved in .pkl file. I have provided one such file with averaged 1000 MC simulations in MC2ospatnum1000.pkl file, and you can plot it's result also in this file.

You can toggle between simulation and plotting the results just with commenting out the appropriate section.