Development of an Algorithm for Dividing Video Stimuli into Areas of Intesests (AOI) for Synamic Eye-Tracking Data Pre-processing

This thesis is part of a larger study on analyzing Dynamic (Interactive) Stim- uli Eye-Tracking Data of students with the end goal of finding differences between novice and expert programmers when it comes to program comprehension and code debugging. For the grouping of video frames into scenes base...

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Main Author: Lagmay, Ezekiel Adriel
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Published: Archīum Ateneo 2020
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Online Access:https://archium.ateneo.edu/theses-dissertations/408
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spelling ph-ateneo-arc.theses-dissertations-15342021-09-27T03:00:04Z Development of an Algorithm for Dividing Video Stimuli into Areas of Intesests (AOI) for Synamic Eye-Tracking Data Pre-processing Lagmay, Ezekiel Adriel This thesis is part of a larger study on analyzing Dynamic (Interactive) Stim- uli Eye-Tracking Data of students with the end goal of finding differences between novice and expert programmers when it comes to program comprehension and code debugging. For the grouping of video frames into scenes based on the desktop en- vironment, a Video Frame Scene Grouping Algorithm was developed which is able to group different frames of a video into different scenes based on the desktop envi- ronment using Structural Similarity Index (SSIM). For the estimation of potential Areas of Interests (AOIs) and their boundaries, an Automatic AOI Bounding Boxes Estimation Algorithm which uses Image Sharpening, Histogram Equalization, K- Means, Bilateral Filtering, and SLIC was created to determine potential Areas of Interests. These two algorithms are then brought together into one algorithm that utilizes multiprocessing to perform Video Frame Scene Grouping Algorithm simul- taneously on multiple videos and Watchdog and threading to perform Automatic AOI Bounding Boxes Estimation Algorithm simultaneously on multiple frames of a video across scenes. Qualitative and Quantitative analyses show that while both algorithms are very effective in performing their intended function, there are in- deed rooms for improvement most especially when it comes to the runtime, and as well the accuracy of the Automatic AOI Bounding Boxes Estimation Algorithm. 2020-01-01T08:00:00Z text https://archium.ateneo.edu/theses-dissertations/408 Theses and Dissertations (All) Archīum Ateneo n/a
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
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Lagmay, Ezekiel Adriel
Development of an Algorithm for Dividing Video Stimuli into Areas of Intesests (AOI) for Synamic Eye-Tracking Data Pre-processing
description This thesis is part of a larger study on analyzing Dynamic (Interactive) Stim- uli Eye-Tracking Data of students with the end goal of finding differences between novice and expert programmers when it comes to program comprehension and code debugging. For the grouping of video frames into scenes based on the desktop en- vironment, a Video Frame Scene Grouping Algorithm was developed which is able to group different frames of a video into different scenes based on the desktop envi- ronment using Structural Similarity Index (SSIM). For the estimation of potential Areas of Interests (AOIs) and their boundaries, an Automatic AOI Bounding Boxes Estimation Algorithm which uses Image Sharpening, Histogram Equalization, K- Means, Bilateral Filtering, and SLIC was created to determine potential Areas of Interests. These two algorithms are then brought together into one algorithm that utilizes multiprocessing to perform Video Frame Scene Grouping Algorithm simul- taneously on multiple videos and Watchdog and threading to perform Automatic AOI Bounding Boxes Estimation Algorithm simultaneously on multiple frames of a video across scenes. Qualitative and Quantitative analyses show that while both algorithms are very effective in performing their intended function, there are in- deed rooms for improvement most especially when it comes to the runtime, and as well the accuracy of the Automatic AOI Bounding Boxes Estimation Algorithm.
format text
author Lagmay, Ezekiel Adriel
author_facet Lagmay, Ezekiel Adriel
author_sort Lagmay, Ezekiel Adriel
title Development of an Algorithm for Dividing Video Stimuli into Areas of Intesests (AOI) for Synamic Eye-Tracking Data Pre-processing
title_short Development of an Algorithm for Dividing Video Stimuli into Areas of Intesests (AOI) for Synamic Eye-Tracking Data Pre-processing
title_full Development of an Algorithm for Dividing Video Stimuli into Areas of Intesests (AOI) for Synamic Eye-Tracking Data Pre-processing
title_fullStr Development of an Algorithm for Dividing Video Stimuli into Areas of Intesests (AOI) for Synamic Eye-Tracking Data Pre-processing
title_full_unstemmed Development of an Algorithm for Dividing Video Stimuli into Areas of Intesests (AOI) for Synamic Eye-Tracking Data Pre-processing
title_sort development of an algorithm for dividing video stimuli into areas of intesests (aoi) for synamic eye-tracking data pre-processing
publisher Archīum Ateneo
publishDate 2020
url https://archium.ateneo.edu/theses-dissertations/408
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