Skip to content

System to count the people entering and leaving an entrance, using a DNN as a detector (YOLO) and a tracking algorithm to count and track (CSRT)

License

Notifications You must be signed in to change notification settings

orfar1994/Counting_people_system

Repository files navigation

People counting system by Ido Galil & Or Farfara

Short Overview

The system counts the people entering and leaving an entrance, using a Deep Neural Network as a detector (YOLOv3) and a tracking algorithm to track and count (DCF-CSR \ CSRT). It was developed by myself and Or Farfara as a project in Machine Learning & Computer Vision at the Technion, and intended for use by the Technion's libraries (though it could be optimized for any entrance).

Demo

Short demo of the system with some of its features turned on: https://www.youtube.com/watch?v=XJ_s2oy9_hc&t=4s

Requirements

  • Python 3
  • GPU and CUDA 9.0 installed

Setup

  • Clone repo
  • Install dependencies in requirements.txt file (pip install requirements.txt)
  • Download the detector YOLOv3-416's h5 file from here: https://pjreddie.com/darknet/yolo/ And insert it into the model_data folder.

Important notes and how to use

  • You should read the user's manual attached https://github.com/orfar1994/Counting_people_system/blob/master/Counting%20System%20User's%20manual.pdf
  • The system has some parameters that should be optimized to the specific entrance it's used on. Most importantly, DI and MCDF.
  • For more information about the components and ideas of the system and how they were developed, read the project's report.
  • The code is relatively modular, in such a way it would be easy to modify the detector and the tracker components as better updated ones are made.
  • The system is intended for real-time performance (more info in the report), and as such requires GPU. note that it could recieve its input from an IP camera, but to work in near real-time the video must be obtained at high speeds.

About

System to count the people entering and leaving an entrance, using a DNN as a detector (YOLO) and a tracking algorithm to count and track (CSRT)

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages