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CarIdentifier

This project is responsible for receiving a video containing several vehicles and identifying how many cars there are in the image.

Adjustments and improvements

The project is still under development and the next updates will focus on the following tasks:

  • [] Import and work the Media within the application.
  • [] Create machine learning code to identify cars in the media.
  • [] Save the data of how many vehicles there were in the image in the database.

💻 Prerequisites

Before starting, make sure you've met the following requirements:

  • Have you installed the latest version of <Python3>?.
  • Do you have a machine <Windows / Linux / Mac>?.

🚀 Installing

To install , follow this steps:

python -m pip install virtualenv

Run the code above to install the library that will create the python virtual environment.

cd /env/Scripts/
run "activate.bat"

Run the code above to enable the virtual environment.

python -m pip install -r requirements.txt

Run the code above in the same directory as the requirements.txt file to install the libraries needed for the project to work.

☕ Using

Para usar , siga estas etapas:

python app.py

Run the above command in the same directory as the "app.py" file to run the API locally.

Using the API

To run the API activate the Flask server:

<path: TCC/> 
flask run

by default the server will use the port 5000

see access endpoints and their methods

localhost:5000/apidoc/swagger

🤝 Collaborators

We thank the following people who contributed to this project:

+ Foto do Guilherme Anacleto no GitHub
Guilherme Anacleto
+ Foto do Elias Santana no GitHub
Elias Santana

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