User Tools

Site Tools


sift:tutorials:tutorial_overview

Tutorial Overview

Get more comfortable with all that Sift has to offer by working through the following tutorials.

Tutorial Data Files

Sift's tutorials use real data sets wherever possible in order to demonstrate realistic scenarios and avoid overly simplistic examples. Download links to the tutorial datasets can be found here.

Getting Started

Working through these four tutorials will provide you with an overview of how Sift lets you analyse your motion capture data sets from start to finish.

Principal Component Analysis

PCA is a key analytical feature in Sift, allowing you to represent complex biomechanicals waveforms in low-dimensional spaces while maintaining most of the waveforms' information. This tutorial will provide you with an overview of how to perform PCA in Sift and of your options for follow-on analysis.

  • Perform Principal Component Analysis: This tutorial provides an overview of performing PCA. This tutorial is the same as the PCA tutorial in the “Getting Started” section.
  • Run K-Means: This tutorial shows how you can use the k-means algorithms to cluster the results of PCA analysis.
  • PCA Outlier Detection: This tutorial shows how you can use outlier detection methods to find outliers from your PCA analysis.

Statistical Parametric Mapping

Public Data Sets

Exploring publicly available data with Sift is a great way to understand the original paper, learn about Sift's features, and get ideas for your own work.

sift/tutorials/tutorial_overview.txt · Last modified: 2024/10/23 10:38 by wikisysop