Skip to content

Latest commit

 

History

History
59 lines (43 loc) · 2.65 KB

README.md

File metadata and controls

59 lines (43 loc) · 2.65 KB

moni logo


This is the offical repository of our project moni for the hackathon Hackathon Thurgau 2023. The project was created and developed during the hackathon competition.

The project aims to provide a solution for the Challenge 3: occupancy measurement of a store. This was achieved by using a combination of computer vision and a cnn model (for ReID) to detect and track people in a store and their movement. The data is then used for further analysis and visualizations.

Quicklinks

Project Structure

Folder Structure

moni
├─── conf                               Configuration files
|    └─── example-config.yml            Example configuration file
├─── examples                           Configuration files
|    └─── homography.ipynb              Jupyter Notebook for homography show case
├─── github-content                     Images for the README.md
|    |─── tech.md                       Technical documentation how to use moni
|    └─── mermaid_chart.txt             Mermaid chart of the moni architecture
├─── Yolov7_StrongSORT_OSNet            Submodule from: mikel-brostrom
├─── .gitignore                         Gitignore file
├─── .gitmodules                        Gitmodules file
├─── Dockerfile                         Dockerfile to containerize moni
├─── README.md                          README.md
├─── main.py                            Moni main python script
├─── runner_utils.py                    Util functions which are used by moni
├─── runner.py                          Runner function which does the processing work
├─── requirements.txt                   Requirements file
└─── docker-compose.yml                 Docker compose file to spin up the whole moni platform

Flow/Process Diagram

moni logo

Demo

This is a demo of the running application with 3 different views:

Demo Video

Video Source: EPFL Labs

Authors