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中文 | English

LOGO

An efficient and flexible data annotation tool

PaddleLabel aims to become an effective and flexible data annotation tool. There are three parts to this project. This repo contains backend implementation. PaddleLabel-Frontend contains the React/Antd frontend. PaddleLabel-ML contains the machine learning backend for automatic and interactive models.

Install

Installing in a new enviroment is not required but suggested.

conda create -n pplabel python=3.9
conda activate pplabel

pip

pip install paddlelabel
paddlelabel

paddlelabel is now running at http://127.0.0.1:17995

source

First clone this repo for backend code.

git clone https://github.com/PaddleCV-SIG/PaddleLabel

Then clone and build frontend

git clone https://github.com/PaddleCV-SIG/PaddleLabel-Frontend
cd PaddleLabel-Frontend
npm install -g yarn
yarn
npm run build
cd ..

The last step is to copy built frontend to

cd PaddleLabel
pip install -r requirements.txt
mkdir paddlelabel/static/
cp -r ../PaddleLabel-Frontend/dist/* paddlelabel/static/

python setup.py install

Run

After installation, run PaddleLabel from command line with

paddlelabel

PaddleLabel is now avaliable at http://127.0.0.1:17995

You can also choose to expose the service to lan. This way it's possbile to run the service on a computer and annotate with a tablet.

paddlelabel --lan

Dataset Import/Export

PaddleLabel currently support image classification, object detection and image segmentation projects. Please refer to the Dataset File Structure Documentation for more details.

Release Notes

  • 2022.5.31: v0.1.0 [1] Support image classification, detection and segmentations. [2] Interactive image segmentation with EISeg models

Contribute

Please refer to the Developers Guide for details on backend implementation.