A study on machine learning algorithms for fall detection and movement classification

View/ Open
Date
2009-12-15Author
Ralhan, Amitoz Singh
Type
ThesisDegree Level
MastersMetadata
Show full item recordAbstract
Fall among the elderly is an important health issue. Fall detection and movement tracking techniques are therefore instrumental in dealing with this issue. This thesis responds to the
challenge of classifying different movement types as a part of a system designed to fulfill the need for a wearable device to collect data for fall and near-fall analysis. Four different fall activities (forward, backward, left and right),
three normal activities (standing, walking and lying down) and near-fall situations are identified and detected. Different machine
learning algorithms are compared and the best one is used for the real time classification. The comparison is made using Waikato Environment for Knowledge Analysis or in short WEKA. The system also has the ability to adapt to different gaits of different people. A feature selection algorithm is also introduced to reduce the number
of features required for the classification problem.
Degree
Master of Science (M.Sc.)Department
Electrical EngineeringProgram
Electrical EngineeringSupervisor
Ko, Seok-BumCommittee
Teng, Daniel; Ludwig, Simone; Dinh, AnhCopyright Date
December 2009Subject
Machine Learning
Fall Detection
Feature Selection