Personalized face and gesture analysis using hierarchical neural networks

The video-based computational analyses of human face and gesture signals encompass a myriad of challenging research problems involving computer vision, machine learning and human computer interaction. In this thesis, we focus on the following challenges: a) the classification of hand and body gestur...

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Bibliographic Details
Main Author: Joshi, Ajjen Das
Other Authors: Betke, Margrit
Language:en_US
Published: 2019
Subjects:
Online Access:https://hdl.handle.net/2144/34774
id ndltd-bu.edu-oai-open.bu.edu-2144-34774
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spelling ndltd-bu.edu-oai-open.bu.edu-2144-347742019-05-30T15:02:07Z Personalized face and gesture analysis using hierarchical neural networks Joshi, Ajjen Das Betke, Margrit Sclaroff, Stan Computer science Face analysis Gesture analysis Hierarchical Bayesian neural networks Personalization The video-based computational analyses of human face and gesture signals encompass a myriad of challenging research problems involving computer vision, machine learning and human computer interaction. In this thesis, we focus on the following challenges: a) the classification of hand and body gestures along with the temporal localization of their occurrence in a continuous stream, b) the recognition of facial expressivity levels in people with Parkinson's Disease using multimodal feature representations, c) the prediction of student learning outcomes in intelligent tutoring systems using affect signals, and d) the personalization of machine learning models, which can adapt to subject and group-specific nuances in facial and gestural behavior. Specifically, we first conduct a quantitative comparison of two approaches to the problem of segmenting and classifying gestures on two benchmark gesture datasets: a method that simultaneously segments and classifies gestures versus a cascaded method that performs the tasks sequentially. Second, we introduce a framework that computationally predicts an accurate score for facial expressivity and validate it on a dataset of interview videos of people with Parkinson's disease. Third, based on a unique dataset of videos of students interacting with MathSpring, an intelligent tutoring system, collected by our collaborative research team, we build models to predict learning outcomes from their facial affect signals. Finally, we propose a novel solution to a relatively unexplored area in automatic face and gesture analysis research: personalization of models to individuals and groups. We develop hierarchical Bayesian neural networks to overcome the challenges posed by group or subject-specific variations in face and gesture signals. We successfully validate our formulation on the problems of personalized subject-specific gesture classification, context-specific facial expressivity recognition and student-specific learning outcome prediction. We demonstrate the flexibility of our hierarchical framework by validating the utility of both fully connected and recurrent neural architectures. 2019-04-09T18:58:17Z 2019-04-09T18:58:17Z 2018 2019-02-05T20:10:03Z Thesis/Dissertation https://hdl.handle.net/2144/34774 en_US
collection NDLTD
language en_US
sources NDLTD
topic Computer science
Face analysis
Gesture analysis
Hierarchical Bayesian neural networks
Personalization
spellingShingle Computer science
Face analysis
Gesture analysis
Hierarchical Bayesian neural networks
Personalization
Joshi, Ajjen Das
Personalized face and gesture analysis using hierarchical neural networks
description The video-based computational analyses of human face and gesture signals encompass a myriad of challenging research problems involving computer vision, machine learning and human computer interaction. In this thesis, we focus on the following challenges: a) the classification of hand and body gestures along with the temporal localization of their occurrence in a continuous stream, b) the recognition of facial expressivity levels in people with Parkinson's Disease using multimodal feature representations, c) the prediction of student learning outcomes in intelligent tutoring systems using affect signals, and d) the personalization of machine learning models, which can adapt to subject and group-specific nuances in facial and gestural behavior. Specifically, we first conduct a quantitative comparison of two approaches to the problem of segmenting and classifying gestures on two benchmark gesture datasets: a method that simultaneously segments and classifies gestures versus a cascaded method that performs the tasks sequentially. Second, we introduce a framework that computationally predicts an accurate score for facial expressivity and validate it on a dataset of interview videos of people with Parkinson's disease. Third, based on a unique dataset of videos of students interacting with MathSpring, an intelligent tutoring system, collected by our collaborative research team, we build models to predict learning outcomes from their facial affect signals. Finally, we propose a novel solution to a relatively unexplored area in automatic face and gesture analysis research: personalization of models to individuals and groups. We develop hierarchical Bayesian neural networks to overcome the challenges posed by group or subject-specific variations in face and gesture signals. We successfully validate our formulation on the problems of personalized subject-specific gesture classification, context-specific facial expressivity recognition and student-specific learning outcome prediction. We demonstrate the flexibility of our hierarchical framework by validating the utility of both fully connected and recurrent neural architectures.
author2 Betke, Margrit
author_facet Betke, Margrit
Joshi, Ajjen Das
author Joshi, Ajjen Das
author_sort Joshi, Ajjen Das
title Personalized face and gesture analysis using hierarchical neural networks
title_short Personalized face and gesture analysis using hierarchical neural networks
title_full Personalized face and gesture analysis using hierarchical neural networks
title_fullStr Personalized face and gesture analysis using hierarchical neural networks
title_full_unstemmed Personalized face and gesture analysis using hierarchical neural networks
title_sort personalized face and gesture analysis using hierarchical neural networks
publishDate 2019
url https://hdl.handle.net/2144/34774
work_keys_str_mv AT joshiajjendas personalizedfaceandgestureanalysisusinghierarchicalneuralnetworks
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