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---
title: What is ArGaze?
---
# Develop post- or real-time gaze analysis applications
**Useful links**: [Installation](installation.md) | [Source Repository](https://gitpub.recherche.enac.fr/argaze) | [Issue Tracker](https://git.recherche.enac.fr/projects/argaze/issues) | [Contact](mailto:argaze-contact@recherche.enac.fr)
**ArGaze** is an open and flexible Python software library designed to provide a unified and modular approach to gaze analysis or gaze interaction.
By offering a wide array of gaze metrics and supporting easy extension to incorporate additional metrics, **ArGaze** empowers researchers and practitioners to explore novel analytical approaches efficiently.
![ArGaze pipeline](img/argaze_pipeline.png)
## Eye tracking context
**ArGaze** facilitates the integration of both **screen-based and head-mounted** eye tracking systems for **real-time and/or post-processing analysis**.
[Learn how to handle various eye tracking context by reading the dedicated user guide section](./user_guide/eye_tracking_context/introduction.md).
## Gaze analysis pipeline
Once incoming eye tracking data available, **ArGaze** provides an extensible modules library, allowing to select application-specific algorithms at each pipeline step:
* **Fixation/Saccade identification**: dispersion threshold identification, velocity threshold identification, etc.
* **Area Of Interest (AOI) matching**: focus point inside, deviation circle coverage, etc.
* **Scan path analysis**: transition matrix, entropy, explore/exploit ratio, etc.
All those gaze analysis features can be used with any screen-based eye tracker devices.
[Learn how to build gaze analysis pipelines for various use cases by reading the dedicated user guide section](./user_guide/gaze_analysis_pipeline/introduction.md).
## Augmented reality based on ArUco marker pipeline
Things goes harder when gaze data comes from head-mounted eye tracker devices. That's why **ArGaze** provides **Augmented Reality (AR)** support to map **Areas Of Interest (AOI)** on [OpenCV ArUco markers](https://www.sciencedirect.com/science/article/abs/pii/S0031320314000235).
![ArUco pipeline axis](img/aruco_pipeline_axis.png)
This ArUco marker pipeline can be combined with any wearable eye tracking device Python library, like Tobii or Pupil glasses.
[Learn how to build ArUco marker pipelines for various use cases by reading the dedicated user guide section](./user_guide/aruco_marker_pipeline/introduction.md).
!!! note
*ArUco marker pipeline is greatly inspired by [Andrew T. Duchowski, Vsevolod Peysakhovich and Krzysztof Krejtz article](https://git.recherche.enac.fr/attachments/download/1990/Using_Pose_Estimation_to_Map_Gaze_to_Detected_Fidu.pdf) about using pose estimation to map gaze to detected fiducial markers.*
## Demonstration
![type:video](https://achil.recherche.enac.fr/videos/argaze_features.mp4)
[Test **ArGaze** by reading the dedicated user guide section](./user_guide/utils/demonstrations_scripts.md).
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