Abstract In this study, importance of user inputs is studied in the context of personalizing human activity recognition models using incremental learning. Inertial sensor data from three body positions are used, and the classification is based on Learn++ ensemble method. Three different approaches to update models are compared: non-supervised, semi-supervised and supervised. Non-supervised approach relies fully on predicted labels, supervised fully on user labeled data, and the proposed method for semisupervised learning, is a combination of these two. In fact, our experiments show that by relying on predicted labels with high confidence, and asking the user to label only uncertain observations (from 12% to 26% of the observations dependin...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
Human activity recognition using wearable devices is an active area of research in pervasive computi...
Human Activity Recognition has been primarily investigated as a machine learning classification task...
Abstract In this study, the aim is to personalize inertial sensor databased human activity recognit...
Abstract This study presents incremental learning based methods to personalize human activity recog...
Abstract This study introduces an ensemble-based personalized human activity recognition method rel...
Built-in sensors in most modern smartphones open multipleopportunities for novel context-aware appli...
In recent years research on human activity recognition using wearable sensors has enabled to achieve...
<p>The mission of the research presented in this thesis is to give computers the power to sense and ...
Given sensors to detect object use, commonsense priors of object usage in activities can reduce the ...
The recognition of day-to-day activities is a major research subject for the monitoring of health an...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
Abstract In this article, it is studied how well inertial sensor-based human activity recognition mo...
Activity recognition is central to many motion analysis applications ranging from health assessment ...
Abstract In this paper, a noise injection method to improve personal recognition models is presented...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
Human activity recognition using wearable devices is an active area of research in pervasive computi...
Human Activity Recognition has been primarily investigated as a machine learning classification task...
Abstract In this study, the aim is to personalize inertial sensor databased human activity recognit...
Abstract This study presents incremental learning based methods to personalize human activity recog...
Abstract This study introduces an ensemble-based personalized human activity recognition method rel...
Built-in sensors in most modern smartphones open multipleopportunities for novel context-aware appli...
In recent years research on human activity recognition using wearable sensors has enabled to achieve...
<p>The mission of the research presented in this thesis is to give computers the power to sense and ...
Given sensors to detect object use, commonsense priors of object usage in activities can reduce the ...
The recognition of day-to-day activities is a major research subject for the monitoring of health an...
Abstract. Sensor-based human activity recognition aims to automati-cally identify human activities f...
Abstract In this article, it is studied how well inertial sensor-based human activity recognition mo...
Activity recognition is central to many motion analysis applications ranging from health assessment ...
Abstract In this paper, a noise injection method to improve personal recognition models is presented...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
Human activity recognition using wearable devices is an active area of research in pervasive computi...
Human Activity Recognition has been primarily investigated as a machine learning classification task...