Pixano is a web-based smart-annotation tool for computer vision applications. The modules are driven by artificial intelligence, which assists the human user with annotation tasks and accelerate the annotation process. Try some of our features online!
The easiest way to get up-and-running is to install Docker. Then, you should be able to download and run the pre-built image using the docker command line tool. Find out more about the pixano
image on its Docker Hub page.
Here's the simplest way you can run the Pixano application using docker:
sudo docker run -it --rm -v "$PWD":/data -p 3000:3000 pixano/pixano-app
The path where you run this command must contain the data you want to annotate.
NB: This path is defined as your workspace.
In practice, we suggest you setup an alias called pixano
to automatically expose the folder containing your specified image, so the script can read it and store results where you can access them. This is how you can do it in your terminal console on OSX or Linux:
# Setup the alias. Put this in your .bashrc file so it's available at startup.
# Note that the --network host works only on Linux, use explicit port mapping for Windows and Mac
alias pixano='function ne() { if [ -d "$(pwd)/$1" ]; then DATA="$(pwd)/$1" && shift; else DATA="$(pwd)"; fi; sudo docker run --init -it --rm --network host -v "$DATA":/data pixano/pixano-app $@; }; ne'
# Now run pixano using alias with workspace as argument
pixano ./data-test --port 3001
# or omit workspace and use current directory by default
# pixano
- NodeJS (10, 12 or 14) To install on ubuntu:
# Make sure you have curl installed
sudo apt install curl
# Then download and execute the Node.js 10.x installer
curl -sL https://deb.nodesource.com/setup_12.x | sudo -E bash -
# Once the installer is done doing its thing, you will need to install (or upgrade) Node.js
sudo apt install nodejs
# Make sure the version is now correct
nodejs --version
npm install -g [email protected]
You can read this nice [introduction](https://codeburst.io/the-only-nodejs-introduction-youll-ever-need-d969a47ef219) to NodeJS in case you're curious on how it works.
ATTENTION: node version 16 is not compatible for now
npm run deps
If you want to use custom pixano-element
modules from local path instead of the NPM registry, link them as explained below:
# Install application dependencies and local pixano-elements
npm run installLocalElements --path=$PIXANO_ELEMENTS_PATH
NB: Make sure you have the git repository of pixano-elements next to the pixano-app folder and that you have followed the pixano-elements build instructions before running the above commands.
If this command breaks your local pixano-elements demo, this command will repear it:
cd $PIXANO_ELEMENTS_PATH
npm run bootstrap
# Bundle the application using Webpack
# This will create a build folder containing all the sources to be served
npm run build
In the command prompt, type in pixano /path/to/your/workspace
from the root folder and hit enter. (or alternatively : node cli/pixano /path/to/your/workspace
)
NB: Make sure when typing this command that the workspace (/path/to/your/workspace
) contains all of the data you want to use.
Type in pixano --help
to get the options available in your current version of Pixano.
After running Pixano-App, you’ll see something similar to this:
┌────────────────────────────────────────────────────────────────────────┐
│ │
│ Serving /path/to/your/workspace │
│ │
│ - Local: http://localhost:3000 │
│ - On Your Network: http://xxx.xxx.x.xx:3000 │
│ │
└────────────────────────────────────────────────────────────────────────┘
Open your browser and hit http://localhost:3000. You should see the login page of the application.
First authentication is: username: admin
password: admin
.
Before annotating, configure your project by following our admin's guide. You will be able to:
- define your datasets
- define your desired annotation tasks
- define your users and their role (annotators, validators, administrators)
Once a task is defined, you (or your annotators) will be able to annotate your dataset. See our annotator's guide for your first steps.
Our plugins' guide will help you in the use of your current task's specific plugin.
Get your annotations and use them for any external application easily:
- as an admin, go to the tasks tab
- press the "EXPORT" button
- you will find the exported annotations in the root of your workspace (find more information on annotation format bellow)
Pixano-app can be used standalone on a single machine. In this case, the "admin" can also directly annotate and validate his datasets. See our admin's guide for more details.
Pixano-app is also developed to enable a distributed work:
- install Pixano-app on a server and open its ip and port to your annotators inside your network
- define your datasets, tasks and users (See admin's guide). The tasks will be automatically distributed between the annotators.
- each annotator can start working immediately from his computer without installing anything by connecting to http://xxx.xxx.x.xx:3000
If you want to analyze predictions from your last detector or use these predictions as a pre-annotation, you can import these predictions as existing annotations by using our annotation format.
data-test
│
│───images
│ │ xxx.jpg
│ └─── yyy.jpg
│
└───annotations
│─── task1.json
└─── task1
│ xxx.json
└─── yyy.json
The task1.json
file contains global task settings (task type, task categories, image folder, etc) and its corresponding task1
folder contains an annotation file for each image. To prepare those files check the import documentation.
To create a docker image of the application, you can use the standard docker command:
# You can change `pixano` by your choosen image name
sudo docker build -t pixano/pixano-app:my-tag .
If you used a local pixano-element, build the application (step 1.b) and then run:
# You can use the local Dockerfile if the build folder already exists
sudo docker build -t pixano/pixano-app:my-tag -f Dockerfile-local .
If you tested Pixano and identified some issues or think some useful features are missing, please open an issue.
If you want to edit the application to your liking, fork this repository!
If you want to contribute more actively to the project, feel free to write your patches or new features and make a pull request!
Pixano-app is a monorepo built on top of web components dedicated to annotation (developed in a separate repo: pixano-elements):
- the backend manages the data (datasets to be annotated), the tasks (tasks to be performed by annotators) and the users (annotators, validators, admin)
- the frontend implements the web views and calls the elements through plugins
- backend and frontend communicate via a REST api
Pixano-elements provides a wide set of smart and re-usable web components to build highly customizable image and video annotation tools: 2D and 3D bounding boxes, polygons, segmentation masks, customizable labels, label temporal propagation, etc. Pixano-app relies on these web components.
- General documentation:
- To get familiar with how the app is built from Web Components, read the LitElement documentation.
- To get familiar with how the data is managed in the client, read the redux documentation.
- Pixano's developers documentation
- To better understand the Pixano server API, read its documentation
- To get familiar with Pixano's elements, take a look at its dedicated repository and modules documentation