Skip to content

Master's Degree Project – M.Sc. in Media Technology and Engineering at Linköping University – Automated Gait Analysis Using Deep Metric Learning

License

Notifications You must be signed in to change notification settings

isakengstrom/masters-project

Repository files navigation

Master's Thesis | Automated Gait Analysis - Using Deep Metric Learning

This part of the repo contains the code and other necessities from Isak Engström's master thesis, taking place during the spring and summer of 2021.

The Task

The goal of this thesis is to investigate automated gait analysis using deep metric learning.

The Paper

The paper of the thesis can be found here in the repo, or on the DiVA portal: Thesis paper (published version)

Understanding the data/code

The following section aims to clear up the naming of data, datasets and code.

The FOI Walking Gait Dataset

To evaluate the Gait, the "FOI Walking Gait Dataset" was used. The dataset has ten subjects (individuals) walking on a treadmill for ten to twelve minutes each. Some subjects where recorded at more than one occasion, hence the need to differentiate between these sessions. In the dataset, these are referred to as sequences. Every sequence was covered from five different camera angles/views. To conclude, the dataset has the following structure:

  • SUBJECT_0
    • SEQ_0
      • above.MTS
      • back.MTS
      • front.MTS
      • side.MTS
      • skew.MTS
    • SEQ_1
      • ...
  • ...
  • SUBJECT_9

(Re-)Naming for this project

However, the naming of the dataset might clash with methods used during this thesis. For instance, the word "sequence" is often common when talking about Sequential learning. Therefore, the following terms will be used in the project/code to avoid any confusion:

  • "Subject" (sub) will mean the same this as in the dataset
  • "Session" (sess) will replace "sequence"
  • "View" will be used instead of "angle" when referring to each camera capture.

About

Master's Degree Project – M.Sc. in Media Technology and Engineering at Linköping University – Automated Gait Analysis Using Deep Metric Learning

Topics

Resources

License

Stars

Watchers

Forks

Languages