Nonparametric Discovery of Human Behavior Patterns from Multimodal Data

Recent advances in sensor technologies and the growing interest in context- aware applications, such as targeted advertising and location-based services, have led to a demand for understanding human behavior patterns from sensor data. People engage in routine behaviors. Automatic routine discovery g...

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Main Author: Sun, Feng-Tso
Format: Others
Published: Research Showcase @ CMU 2014
Subjects:
Online Access:http://repository.cmu.edu/dissertations/359
http://repository.cmu.edu/cgi/viewcontent.cgi?article=1359&context=dissertations
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spelling ndltd-cmu.edu-oai-repository.cmu.edu-dissertations-13592015-05-23T03:38:33Z Nonparametric Discovery of Human Behavior Patterns from Multimodal Data Sun, Feng-Tso Recent advances in sensor technologies and the growing interest in context- aware applications, such as targeted advertising and location-based services, have led to a demand for understanding human behavior patterns from sensor data. People engage in routine behaviors. Automatic routine discovery goes beyond low-level activity recognition such as sitting or standing and analyzes human behaviors at a higher level (e.g., commuting to work). The goal of the research presented in this thesis is to automatically discover high-level semantic human routines from low-level sensor streams. One recent line of research is to mine human routines from sensor data using parametric topic models. The main shortcoming of parametric models is that they assume a fixed, pre-specified parameter regardless of the data. Choosing an appropriate parameter usually requires an inefficient trial-and-error model selection process. Furthermore, it is even more difficult to find optimal parameter values in advance for personalized applications. The research presented in this thesis offers a novel nonparametric framework for human routine discovery that can infer high-level routines without knowing the number of latent low-level activities beforehand. More specifically, the frame-work automatically finds the size of the low-level feature vocabulary from sensor feature vectors at the vocabulary extraction phase. At the routine discovery phase, the framework further automatically selects the appropriate number of latent low-level activities and discovers latent routines. Moreover, we propose a new generative graphical model to incorporate multimodal sensor streams for the human activity discovery task. The hypothesis and approaches presented in this thesis are evaluated on public datasets in two routine domains: two daily-activity datasets and a transportation mode dataset. Experimental results show that our nonparametric framework can automatically learn the appropriate model parameters from multimodal sensor data without any form of manual model selection procedure and can outperform traditional parametric approaches for human routine discovery tasks. 2014-05-01T07:00:00Z text application/pdf http://repository.cmu.edu/dissertations/359 http://repository.cmu.edu/cgi/viewcontent.cgi?article=1359&context=dissertations Dissertations Research Showcase @ CMU Activity recognition machine learning topic modeling nonparametric Bayesian probabilistic graphical models context-aware systems
collection NDLTD
format Others
sources NDLTD
topic Activity recognition
machine learning
topic modeling
nonparametric Bayesian
probabilistic graphical models
context-aware systems
spellingShingle Activity recognition
machine learning
topic modeling
nonparametric Bayesian
probabilistic graphical models
context-aware systems
Sun, Feng-Tso
Nonparametric Discovery of Human Behavior Patterns from Multimodal Data
description Recent advances in sensor technologies and the growing interest in context- aware applications, such as targeted advertising and location-based services, have led to a demand for understanding human behavior patterns from sensor data. People engage in routine behaviors. Automatic routine discovery goes beyond low-level activity recognition such as sitting or standing and analyzes human behaviors at a higher level (e.g., commuting to work). The goal of the research presented in this thesis is to automatically discover high-level semantic human routines from low-level sensor streams. One recent line of research is to mine human routines from sensor data using parametric topic models. The main shortcoming of parametric models is that they assume a fixed, pre-specified parameter regardless of the data. Choosing an appropriate parameter usually requires an inefficient trial-and-error model selection process. Furthermore, it is even more difficult to find optimal parameter values in advance for personalized applications. The research presented in this thesis offers a novel nonparametric framework for human routine discovery that can infer high-level routines without knowing the number of latent low-level activities beforehand. More specifically, the frame-work automatically finds the size of the low-level feature vocabulary from sensor feature vectors at the vocabulary extraction phase. At the routine discovery phase, the framework further automatically selects the appropriate number of latent low-level activities and discovers latent routines. Moreover, we propose a new generative graphical model to incorporate multimodal sensor streams for the human activity discovery task. The hypothesis and approaches presented in this thesis are evaluated on public datasets in two routine domains: two daily-activity datasets and a transportation mode dataset. Experimental results show that our nonparametric framework can automatically learn the appropriate model parameters from multimodal sensor data without any form of manual model selection procedure and can outperform traditional parametric approaches for human routine discovery tasks.
author Sun, Feng-Tso
author_facet Sun, Feng-Tso
author_sort Sun, Feng-Tso
title Nonparametric Discovery of Human Behavior Patterns from Multimodal Data
title_short Nonparametric Discovery of Human Behavior Patterns from Multimodal Data
title_full Nonparametric Discovery of Human Behavior Patterns from Multimodal Data
title_fullStr Nonparametric Discovery of Human Behavior Patterns from Multimodal Data
title_full_unstemmed Nonparametric Discovery of Human Behavior Patterns from Multimodal Data
title_sort nonparametric discovery of human behavior patterns from multimodal data
publisher Research Showcase @ CMU
publishDate 2014
url http://repository.cmu.edu/dissertations/359
http://repository.cmu.edu/cgi/viewcontent.cgi?article=1359&context=dissertations
work_keys_str_mv AT sunfengtso nonparametricdiscoveryofhumanbehaviorpatternsfrommultimodaldata
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