PREDICTING ENERGY EXPENDITURE FROM PHYSICAL ACTIVITY VIDEOS USING OPTICAL FLOWS AND DEEP LEARNING

File(s)
Date
2024-05-01Author
Kasturi, Gayatri
Department
Computer Science
Advisor(s)
Rohit J Kate
Metadata
Show full item recordAbstract
This thesis presents a novel approach for predicting energy expenditure of physical activity from videos using optical flows and deep learning. Conventional approaches mainly rely on wearable sensors, which, despite being widely used, are constrained by practicality and accuracy concerns. This proposal introduces a new strategy that utilizes a three-dimensional Convolutional Neural Network (3D-CNN) to evaluate video data and accurately estimate energy costs in metabolic equivalents (METs). Our model utilizes optical flow extraction to analyze video, capturing complex motion patterns and their changes over time. The results are good indicating potential for this method to be deployed in various healthcare applications, such as automatic health monitoring and physical activity surveillance. This research contributes towards accurate automatic estimation of energy expenditure of physical activity simply from recorded videos and thus creates opportunities for non-invasive health monitoring systems.
Subject
3D-CNN
Energy Expenditure
Frame Differences
Machine Learning
Optical Flow
Physical Activity
Permanent Link
http://digital.library.wisc.edu/1793/93539Type
thesis