New Case Study:See how Anthropic automated 95% of dependency reviews with Socket.Learn More
Socket
Sign inDemoInstall
Socket

real-time-screen-gaze

Package Overview
Dependencies
Maintainers
1
Alerts
File Explorer

Advanced tools

Socket logo

Install Socket

Detect and block malicious and high-risk dependencies

Install

real-time-screen-gaze

Acquire screen-based gaze coordinates in realtime

  • 1.1.2
  • PyPI
  • Socket score

Maintainers
1

===================== Real-time Screen Gaze

This package is designed to allow users of the Pupil Labs eyetracking hardware, especially Neon <https://pupil-labs.com/products/neon/>, to acquire screen-based gaze coordinates in realtime without relying on Pupil Core software <https://github.com/pupil-labs/pupil>.

This works by identifying the image of the display as it appears in the scene camera. We accomplish this with AprilTags <https://april.eecs.umich.edu/software/apriltag>_, 2D barcodes similar to QR codes. This package provides a marker_generator module to create AprilTag image data.

.. code-block:: python

from pupil_labs.real_time_screen_gaze import marker_generator ...

marker_pixels = marker_generator.generate_marker(marker_id=0)

More markers will yield higher accuracy, and we recommend a minimum of four. Each marker must be unique, and the marker_id parameter is provided for this purpose.

Once you've drawn the markers to the screen using your GUI toolkit of choice, you'll next need to setup a GazeMapper object. This requires calibration data for the scene camera. For Neon, this is very simple:

.. code-block:: python

from pupil_labs.realtime_api.simple import discover_one_device from pupil_labs.real_time_screen_gaze.gaze_mapper import GazeMapper ...

device = discover_one_device() calibration = device.get_calibration() gaze_mapper = GazeMapper(calibration)

For Pupil Invisible, you'll need to extract the scene_camera.json file the Time Series Data of a recording which has been been uploaded to Pupil Cloud. This method will also work with Neon recordings in a non-realtime context.

.. code-block:: python

import json from pupil_labs.real_time_screen_gaze.gaze_mapper import GazeMapper ...

with open("scene_camera.json") as calibration_file: calibration_data = json.load(calibration_file) if "dist_coefs" in calibration_data: calibration_data["distortion_coefficients"] = calibration_data["dist_coefs"]

  calibration = {
     "scene_camera_matrix": [calibration_data["camera_matrix"]],
     "scene_distortion_coefficients": [calibration_data["distortion_coefficients"]],
  }

gaze_mapper = GazeMapper(calibration)

Now that we have a GazeMapper object, we need to specify which AprilTag markers we're using and where they appear on the screen.

.. code-block:: python

marker_verts = { 0: [ # marker id 0 (32, 32), # Top left marker corner (96, 32), # Top right (96, 96), # Bottom right (32, 96), # Bottom left ], ... }

screen_size = (1920, 1080)

screen_surface = gaze_mapper.add_surface( marker_verts, screen_size )

Here, marker_verts is a dictionary whose keys are the IDs of the markers we'll be drawing to the screen. The value for each key is a list of the 2D coordinates of the four corners of the marker, starting with the top left and going clockwise.

With that, setup is complete and we're ready to start mapping gaze to the screen! On each iteration of our main loop we'll grab a video frame from the scene camera and gaze data from the Realtime API. We pass those along to our GazeMapper instance for processing, and it returns our gaze positions mapped to screen coordinates.

.. code-block:: python

from pupil_labs.realtime_api.simple import discover_one_device ...

device = discover_one_device(max_search_duration_seconds=10)

while True: frame, gaze = device.receive_matched_scene_video_frame_and_gaze() result = gaze_mapper.process_frame(frame, gaze)

  for surface_gaze in result.mapped_gaze[screen_surface.uid]:
     printf(f"Gaze at {surface_gaze.x}, {surface_gaze.y}")

FAQs


Did you know?

Socket

Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.

Install

Related posts

SocketSocket SOC 2 Logo

Product

  • Package Alerts
  • Integrations
  • Docs
  • Pricing
  • FAQ
  • Roadmap
  • Changelog

Packages

npm

Stay in touch

Get open source security insights delivered straight into your inbox.


  • Terms
  • Privacy
  • Security

Made with ⚡️ by Socket Inc