Hidden patterns and contexts play an important part in intelligent pervasive systems. Most of the existing works have focused on simple forms of contexts derived directly from raw signals. High-level constructs and patterns have been largely neglected or remained under-explored in pervasive computing, mainly due to the growing complexity over time and the lack of efficient principal methods to extract them. Traditional parametric modeling approaches from machine learning find it difficult to discover new, unseen patterns and contexts arising from continuous growth of data streams due to its practice of training-then-prediction paradigm. In this work, we propose to apply Bayesian nonparametric models as a systematic and rigorous paradigm to ...
In data science, anomaly detection is the process of identifying the items, events or observations w...
<p>Recent advances in sensor technologies and the growing interest in context- aware applications, s...
This study focused on challenges come from noisy and complex pervasive data. We proposed new Bayesia...
A fundamental task in pervasive computing is reliable acquisition of contexts from sensor data. This...
This thesis develops machine learning techniques to discover activities and contexts from pervasive ...
The discovery of contexts is important for context-aware applications in pervasive computing. This i...
Understanding human activities is an important research topic, most noticeably in assisted-living an...
Understanding user contexts and group structures plays a central role in pervasive computing. These ...
Understanding human activities is an important research topic, most noticeably in assisted‑living an...
Understanding user contexts and group structures plays a central role in pervasive computing. These ...
Understanding user contexts and group structures plays a central role in pervasive computing. These ...
Context inference is necessary in ubiquitous computing to provide information about contextual infor...
<p>Unprecedented amount of data has been collected in diverse fields such as social network, infecti...
Probability theory forms a natural framework for explaining the impressive success of people at solv...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
In data science, anomaly detection is the process of identifying the items, events or observations w...
<p>Recent advances in sensor technologies and the growing interest in context- aware applications, s...
This study focused on challenges come from noisy and complex pervasive data. We proposed new Bayesia...
A fundamental task in pervasive computing is reliable acquisition of contexts from sensor data. This...
This thesis develops machine learning techniques to discover activities and contexts from pervasive ...
The discovery of contexts is important for context-aware applications in pervasive computing. This i...
Understanding human activities is an important research topic, most noticeably in assisted-living an...
Understanding user contexts and group structures plays a central role in pervasive computing. These ...
Understanding human activities is an important research topic, most noticeably in assisted‑living an...
Understanding user contexts and group structures plays a central role in pervasive computing. These ...
Understanding user contexts and group structures plays a central role in pervasive computing. These ...
Context inference is necessary in ubiquitous computing to provide information about contextual infor...
<p>Unprecedented amount of data has been collected in diverse fields such as social network, infecti...
Probability theory forms a natural framework for explaining the impressive success of people at solv...
We propose a novel framework for large-scale scene understanding in static camera surveillance. Our ...
In data science, anomaly detection is the process of identifying the items, events or observations w...
<p>Recent advances in sensor technologies and the growing interest in context- aware applications, s...
This study focused on challenges come from noisy and complex pervasive data. We proposed new Bayesia...