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Social distancing monitoring application based on Deep Learning

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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

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Social distancing monitoring application based on Deep Learning

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