Skip to content

profewu/ViveTestCodeData

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

7 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

This repository contains code and data from the paper Niehorster, D.C., Li, L. & Lappe, M. (2017). The accuracy and precision of position and orientation tracking in the HTC Vive virtual reality system for scientific research. i-Perception. doi: 10.1177/2041669517708205

The code and data in this repository are licensed under the Creative Commons Attribution 4.0 (CC BY 4.0) license. When using any of the contents of this repository, with or without modification, please cite Niehorster, D.C., Li, L. & Lappe, M. (2017). The accuracy and precision of position and orientation tracking in the HTC Vive virtual reality system for scientific research. i-Perception.

DOI
This repository is available from www.github.com/dcnieho/ViveTestCodeData

What's in the repository:

  • acquisition: python/Vizard 5.6 scripts for recording data. Contains:
    • testTracking - acquire data upon trigger pull, used for capturing data along grid
    • testTrackingOcclusion - acquire data after intervening track loss. Used for recovery tests
    • testTrackingLatency - show image until tracker position changed significantly. Used for latency test
  • analysis: matlab scripts for analyzing data
    • Figure 2: testTrackFaceOneWay
    • Figure 3: testTrackFaceOneWay
    • Figure 4: testTrackFaceBothWays
    • Figure 5: rotationInternalConsistency
    • Figure 6: testTrackFaceBothWays
    • Figure 7: testTrackFaceBothWays
    • Figure 8: testTrackRecovery
    • Figure 9: testTrackRecovery
    • Figure 10: testTrackRecovery
    • Figure 11ab: testTrackFaceBothWays5m
    • Figure 11c: testTrackRecovery
    • Figure 12ab: testTrackFaceBothWays5m
    • Figure 12c: testTrackRecovery
    • Figure 13ab: testTrackFaceBothWays5m
    • Figure 13c: testTrackRecovery
  • data: folder with data files from the paper

About

Code and Data from Niehorster, Li & Lappe, 2017

Resources

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 54.7%
  • MATLAB 45.3%