A fundamental challenge in real-time labelling of activity data is user burden. The Experience Sampling Method (ESM) is widely used to obtain such labels for sensor data. However, in an in-situ deployment, it is not feasible to expect users to precisely label the start and end time of each event or activity. For this reason, time-point based experience sampling (without an actual start and end time) is prevalent. We present a framework that applies multi-instance and semi-supervised learning techniques to perform to predict user annotations from multiple mobile sensor data streams. Our proposed framework estimates users' annotations in ESM-based studies progressively, via an interactive pipeline of co-training and active learning. We e...
Activity recognition has attracted increasing attention in recent years due to its potential to enab...
The research of sensor-based human activity recognition has been attracting increasing attention ove...
Experience Sampling Method (ESM) is widely used in idiographic approaches to collect within-person p...
In this paper we discuss the design and evaluation of a mobile based tool to collect activity data o...
With the Internet of Things paradigm, the data generated by the rapidly increasing number of connect...
With the Internet of Things paradigm, the data generated by the rapidly increasing number of connect...
In Human Activity Recognition (HAR) supervised and semi-supervised training are important tools for ...
Labelling user data is a central part of the design and evaluation of pervasive systems that aim to ...
Nowadays, the advancement of sensing and communication technologies has led to the possibility of co...
Abstract—In Human Activity Recognition (HAR) supervised and semi-supervised training are important t...
The advances in Internet of things lead to an increased number of devices generating and streaming d...
Bootstrapping activity recognition systems in ubiquitous and mobile computing scenarios often comes ...
© 2019 Niels van BerkelThe widespread availability of technologically-advanced mobile devices has br...
Sensor-driven systems often need to map sensed data into meaningfully labelled activities to classif...
The research of sensor-based human activity recognition has been attracting increasing attention ove...
Activity recognition has attracted increasing attention in recent years due to its potential to enab...
The research of sensor-based human activity recognition has been attracting increasing attention ove...
Experience Sampling Method (ESM) is widely used in idiographic approaches to collect within-person p...
In this paper we discuss the design and evaluation of a mobile based tool to collect activity data o...
With the Internet of Things paradigm, the data generated by the rapidly increasing number of connect...
With the Internet of Things paradigm, the data generated by the rapidly increasing number of connect...
In Human Activity Recognition (HAR) supervised and semi-supervised training are important tools for ...
Labelling user data is a central part of the design and evaluation of pervasive systems that aim to ...
Nowadays, the advancement of sensing and communication technologies has led to the possibility of co...
Abstract—In Human Activity Recognition (HAR) supervised and semi-supervised training are important t...
The advances in Internet of things lead to an increased number of devices generating and streaming d...
Bootstrapping activity recognition systems in ubiquitous and mobile computing scenarios often comes ...
© 2019 Niels van BerkelThe widespread availability of technologically-advanced mobile devices has br...
Sensor-driven systems often need to map sensed data into meaningfully labelled activities to classif...
The research of sensor-based human activity recognition has been attracting increasing attention ove...
Activity recognition has attracted increasing attention in recent years due to its potential to enab...
The research of sensor-based human activity recognition has been attracting increasing attention ove...
Experience Sampling Method (ESM) is widely used in idiographic approaches to collect within-person p...