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TUM | Machine Learning in Crowd Modelling & Simulation

Exercise #1

for Summer Semester 2020

First, you need define a simple python virtual environment when you pull the project.

Then run;

pip install -r requirements.txt

Remember that apart from python and pip; the only requirement is numpy, so you can just add that as well.


In order to see a simple welcome page, run the command:

python main.py

For seeing the test scenarios, run:

python main.py <SCENARIO>

From the table below, you can see the available options.

Scenario Argument
Chicken Test chicken
Circular Pedestrians circular
RIMEA Test #1 1
RIMEA Test #4 4
RIMEA Test #6 6
RIMEA Test #7 7

For the case of Test #4, you can also give additional arguments.

You can give a density value in P/(meters square) for pedestrians.

For better performance, density is divided by 5 and width is 200, height is 7 meters long for this option.

python main.py 4 <DENSITY>

You can give the density, width and height values for the corridor.

Width and height in meters, density in Person/(meters square)

You need to be careful with the options since a larger corridor with many pedestrians is very resource consuming!

python main.py 4 <DENSITY> <WIDTH> <HEIGHT>

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