prateekralhan / Instance-Segmentation-using-PixelLib

A streamlit based webapp to perform SOTA instance segmentation on images, videos and live webcam feed

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

✨ Instance Segmentation using PixelLib 🙆‍♂️ Project Status: Active

A streamlit based webapp to perform "State of the Art" instance segmentation on images, videos and live webcam feed using Pixellib.

image

Installation:

  • Simply run the command pip install -r requirements.txt to install the necessary dependencies.
  • In case you need to use your GPU for computation, ensure that you have the right CUDA drivers and CUDNN installed.

Usage:

  1. Simply run the command:
streamlit run app.py
  1. Navigate to http://localhost:8501 in your web-browser.
  2. By default, streamlit allows us to upload files of max. 200MB. If you want to have more size for uploading audio files, execute the command :
streamlit run app.py --server.maxUploadSize=1028

Results


Images

Original Image Segmented Image
pic1 pic1
pic2 pic2
pic3 pic3
pic4 pic4

Videos

Original Video Segmented Video
pic1 pic1
pic2 pic2
pic3 pic3

Live Webcam Feed

live_feed1

livefeed2

Running the Dockerized App

  1. Ensure you have Docker Installed and Setup in your OS (Windows/Mac/Linux). For detailed Instructions, please refer this.
  2. Navigate to the folder where you have cloned this repository ( where the Dockerfile is present ).
  3. Build the Docker Image (don't forget the dot!! 😄 ):
docker build -f Dockerfile -t app:latest .
  1. Run the docker:
docker run -p 8501:8501 app:latest

This will launch the dockerized app. Navigate to http://localhost:8501/ in your browser to have a look at your application. You can check the status of your all available running dockers by:

docker ps

About

A streamlit based webapp to perform SOTA instance segmentation on images, videos and live webcam feed


Languages

Language:Python 94.1%Language:Dockerfile 3.6%Language:Shell 2.0%Language:Procfile 0.4%