Skip to content

Social distancing monitoring application based on Deep Learning

Notifications You must be signed in to change notification settings

prabhakar-sivanesan/social-distancing

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

37 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Social Distancing

Description

Application to monitor social distancing between people in public places using the video feed from Survillence or Security cameras. Many countries have mandated social distancing as a rule that people should follow while they are out in public places amidst the COVID-19 situation. So this application will help government agencies and private organizations to monitor how safe is their place at the current given time.

This application gets a live video feed from the camera or a recorded video file as an input and carry out the below steps,

  • Detect people using SSD Mobilenet model trained on COCO dataset.
  • Calculate the pixel distance between each person
  • Highlight them if they cross the safe threshold distance

Installation

List of neccessary python packages to run this application

numpy==1.18.2
requests==2.18.4
tensorflow==1.15.4
opencv_python==4.1.2.30

Use this command to install all package at once

pip install requirements.txt 

Usage

Download the SSD Mobilenet model from here and place it inside the saved_model folder. Your folder structure should look like this,

|_ input
  |_ video.mp4
|_ saved_model
   |_ get_model.py
   |_ saved_model.pb
|_ README.md
|_ requirements.txt
|_ script.py

Execute this application using the following command,

python3 script.py --minThresh 40 --x 40 --y 10 --input input/video.mp4

This appllication requires few input data,

  • minThresh - Minimum threshold score to detect person in the video
  • model - Path to model
  • input - File path to the input video or Camera ID
  • x - Pixel difference in X axis
  • y - Pixel difference in Y axis

Demo

Alt Image

About

Social distancing monitoring application based on Deep Learning

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 3

  •  
  •  
  •  

Languages