Recognizing self-stimulatory behavior using spatio-temporal convolutional neural network

Autism Spectrum Disorder (ASD) is a neuro-developmental disability that affects cognitive and motor skills, social communication and interaction. One of the most visible and quantifiable indicator of autism is a behavioral cue called self-stimulatory behavior or repetitive movements. In recent years...

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Main Author: Tan, Edwill Dave Ng
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Language:English
Published: Animo Repository 2018
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Online Access:https://animorepository.dlsu.edu.ph/etd_masteral/5582
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spelling oai:animorepository.dlsu.edu.ph:etd_masteral-124202021-01-27T02:43:41Z Recognizing self-stimulatory behavior using spatio-temporal convolutional neural network Tan, Edwill Dave Ng Autism Spectrum Disorder (ASD) is a neuro-developmental disability that affects cognitive and motor skills, social communication and interaction. One of the most visible and quantifiable indicator of autism is a behavioral cue called self-stimulatory behavior or repetitive movements. In recent years, there has been significant efforts in researching the use of technology to help diagnose and monitor ASD. This is in response to the alarming increase in the rate of children affected by ASD. An increase of over 200% was recorded from 2010 to 2014. One of the main research focus is applying technology in observing and monitoring self-stimulatory behaviors since impractical amount of time is needed to perform manual observation. Having an automated system that is able to recognize self-stimulatory behavior can help not only the medical professional but also the child, caregiver, and the parents. Currently, researchers are utilizing sensory data or videos along with traditional machine learning techniques to recognize self-stimulatory behavior. However, application of deep learning, a state-of-the-art machine learning technique, is still subject to further studies. Deep learning has been able to surpass traditional machine learning techniques in different domains. Convolutional neural network, a popular deep learning technique, showed great results in image processing and is being extended to handle video clips to take advantage of the temporal features. Despite being in an infancy stage, spatio-temporal convolutional neural network has already shown competitive or better result than traditional machine learning techniques that use hand-crafted features. This research proposes the use of spatio-temporal convolutional neural network to recognize self-stimulatory behavior. Using SSBD dataset as the basis, this research introduces a new self-stimulatory behavior dataset YTstimming dataset. Furthermore, this research introduces a different data splitting scheme for benchmarking purposes. The best performing spatio-temporal convolutional neural network has a low validation accuracy of 44.37% on a 5-fold cross validation test. However, the model was able to generalize well with a test accuracy of 68.60%. The best performing model is achieved using the SSBD and YTstimming dataset to ne-tune a pre-trained C3D model of on Sports1M Dataset. Lastly, this research creates a prototype that identifies time frames of the occurrence of self-stimulatory behavior in a video. 2018-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_masteral/5582 Master's Theses English Animo Repository Machine learning Neural networks (Computer science)
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Machine learning
Neural networks (Computer science)
spellingShingle Machine learning
Neural networks (Computer science)
Tan, Edwill Dave Ng
Recognizing self-stimulatory behavior using spatio-temporal convolutional neural network
description Autism Spectrum Disorder (ASD) is a neuro-developmental disability that affects cognitive and motor skills, social communication and interaction. One of the most visible and quantifiable indicator of autism is a behavioral cue called self-stimulatory behavior or repetitive movements. In recent years, there has been significant efforts in researching the use of technology to help diagnose and monitor ASD. This is in response to the alarming increase in the rate of children affected by ASD. An increase of over 200% was recorded from 2010 to 2014. One of the main research focus is applying technology in observing and monitoring self-stimulatory behaviors since impractical amount of time is needed to perform manual observation. Having an automated system that is able to recognize self-stimulatory behavior can help not only the medical professional but also the child, caregiver, and the parents. Currently, researchers are utilizing sensory data or videos along with traditional machine learning techniques to recognize self-stimulatory behavior. However, application of deep learning, a state-of-the-art machine learning technique, is still subject to further studies. Deep learning has been able to surpass traditional machine learning techniques in different domains. Convolutional neural network, a popular deep learning technique, showed great results in image processing and is being extended to handle video clips to take advantage of the temporal features. Despite being in an infancy stage, spatio-temporal convolutional neural network has already shown competitive or better result than traditional machine learning techniques that use hand-crafted features. This research proposes the use of spatio-temporal convolutional neural network to recognize self-stimulatory behavior. Using SSBD dataset as the basis, this research introduces a new self-stimulatory behavior dataset YTstimming dataset. Furthermore, this research introduces a different data splitting scheme for benchmarking purposes. The best performing spatio-temporal convolutional neural network has a low validation accuracy of 44.37% on a 5-fold cross validation test. However, the model was able to generalize well with a test accuracy of 68.60%. The best performing model is achieved using the SSBD and YTstimming dataset to ne-tune a pre-trained C3D model of on Sports1M Dataset. Lastly, this research creates a prototype that identifies time frames of the occurrence of self-stimulatory behavior in a video.
format text
author Tan, Edwill Dave Ng
author_facet Tan, Edwill Dave Ng
author_sort Tan, Edwill Dave Ng
title Recognizing self-stimulatory behavior using spatio-temporal convolutional neural network
title_short Recognizing self-stimulatory behavior using spatio-temporal convolutional neural network
title_full Recognizing self-stimulatory behavior using spatio-temporal convolutional neural network
title_fullStr Recognizing self-stimulatory behavior using spatio-temporal convolutional neural network
title_full_unstemmed Recognizing self-stimulatory behavior using spatio-temporal convolutional neural network
title_sort recognizing self-stimulatory behavior using spatio-temporal convolutional neural network
publisher Animo Repository
publishDate 2018
url https://animorepository.dlsu.edu.ph/etd_masteral/5582
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