Skip to content

anjalisoni3655/Bosch

Repository files navigation

German Traffic Sign Recognition Website



German Traffic Sign

Status GitHub Issues GitHub Pull Requests

An Artificial Intelligence tool that predicts Traffic signs based on various pre-trained models and allows user to manipulate datasets.

This repo contains:

  • A React-Flask Based ML Web App



Our Web Application

Explainable AI

GradCam Technique to identify mislabelling hotspots


Using TSNE plots to visualize and evaluate model performance


Key Features

  • Create a complex Dataset
  • Train additional images on the fly
  • View model performances across different metrics
  • Visualize model performance
  • Get suggestions to various shortcomings in model training
  • An explainable AI-based solution to comprehend network failures

Prerequisites

  1. Git.
  2. Node & npm (version 12 or greater).
  3. A fork of the repo.
  4. Python3 environment to install flask

Directory Structure

The following is a high-level overview of relevant files and folders.

backend/
├── backend/
│   ├── template/
│   └── app.py

└── frontend/
    ├── public/
    │   ├── index.html
    │   └── ...
    ├── images/
    │   └── logo.png
    ├── src/
    │   ├── assets/
    │   │   ├── css
    │   │   └── fonts...
    │   ├── components/
    │   │   ├── Sidebar 
    │   │   └── Navbars
    │   └── views/
 
         ├── routes.js
         ├── package.json
       ├── local_vm.sh
       └── .gitignore
       

Installation

Clone

  • Clone this repo to your local machine using https://github.com/anjalisoni3655/Bosch

Steps to run backend

In order to install all packages follow the steps below:

  1. Download the static folder from this drive: https://drive.google.com/file/d/149fh2lq7fT35RQVP5rmTgUfcYPorE9kX/view
  2. Put it in the backend/
  3. Move to backend folder
  4. For installing virtual environment - python3 -m pip install --user virtualenv
  5. Create A Virtual env - python3 -m venv env
  6. Activate virtual env - source env/bin/activate
  7. pip3 install -r requirements.txt
  8. flask run

Steps To Set Up Frontend

  1. Move to frontend folder
  2. npm install
  3. npm start

The model will be served on http://127.0.0.1:5000/


License

This project is licensed under the Apache License, Version 2.0.

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 4

  •  
  •  
  •  
  •