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An eye-tracking based approach to gaze prediction using low-level features

Johannesson, Erik (2005)
Cognitive Science
Abstract
In this master's thesis, an attempt is made to automatically predict where people will look when watching video sequences. An application in the form of foveation for video compression is discussed. A relatively simple prediction model is built based on eyetracking data from several subjects and low-level features generated from the video frames, using simple image processing algorithms. The prediction model uses a new method to extract differences in feature distributions between frame regions that are watched and those that are not. It is first shown that these differences are significant. The differences are then used to predict which regions will be looked at in a new video sequence. The prediction is evaluated against eye-tracking... (More)
In this master's thesis, an attempt is made to automatically predict where people will look when watching video sequences. An application in the form of foveation for video compression is discussed. A relatively simple prediction model is built based on eyetracking data from several subjects and low-level features generated from the video frames, using simple image processing algorithms. The prediction model uses a new method to extract differences in feature distributions between frame regions that are watched and those that are not. It is first shown that these differences are significant. The differences are then used to predict which regions will be looked at in a new video sequence. The prediction is evaluated against eye-tracking data for the new video sequence and it is shown that the prediction is significantly better than random. Moreover, the accuracy of the prediction is compared to that of a group of humans predicting another group of humans. This comparison indicates that the proposed model needs improvement. Finally, a discussion follows about the possibilities and problems of the selected approach to gaze prediction. (Less)
Please use this url to cite or link to this publication:
author
Johannesson, Erik
supervisor
organization
year
type
H1 - Master's Degree (One Year)
subject
keywords
numerical analysis, Computer science, Foveation, Gaze prediction, Eye-tracking, systems, control, Datalogi, numerisk analys, system, kontroll
language
English
id
1328862
date added to LUP
2006-04-12 00:00:00
date last changed
2009-04-20 11:13:39
@misc{1328862,
  abstract     = {{In this master's thesis, an attempt is made to automatically predict where people will look when watching video sequences. An application in the form of foveation for video compression is discussed. A relatively simple prediction model is built based on eyetracking data from several subjects and low-level features generated from the video frames, using simple image processing algorithms. The prediction model uses a new method to extract differences in feature distributions between frame regions that are watched and those that are not. It is first shown that these differences are significant. The differences are then used to predict which regions will be looked at in a new video sequence. The prediction is evaluated against eye-tracking data for the new video sequence and it is shown that the prediction is significantly better than random. Moreover, the accuracy of the prediction is compared to that of a group of humans predicting another group of humans. This comparison indicates that the proposed model needs improvement. Finally, a discussion follows about the possibilities and problems of the selected approach to gaze prediction.}},
  author       = {{Johannesson, Erik}},
  language     = {{eng}},
  note         = {{Student Paper}},
  title        = {{An eye-tracking based approach to gaze prediction using low-level features}},
  year         = {{2005}},
}