Human activity recognition using wearable devices is an active area of research in pervasive computing. In our work, we address the problem of reducing the effort for training and adapting activity recognition approaches to a specific person. We focus on the problem of cross-subjects based recognition models and introduce an approach that considers physical characteristics. Further, to adapt such a model to the behavior of a new user, we present a personalization approach that relies on online and active machine learning. In this context, we use online random forest as a classifier to continuously adapt the model without keeping the already seen data available and an active learning approach that uses user-feedback for adapting the model wh...
Human Activity Recognition is a machine learning task for the classification of human physical activ...
Personalized activity recognition usually has the problem of highly biased activity patterns among d...
Human Activity Recognition has been primarily investigated as a machine learning classification task...
Human activity recognition using wearable devices is an active area of research in pervasive computi...
Reliable human activity recognition with wearable devices enables the development of human-centric p...
Wearable human activity recognition (HAR) is a widely application system for our daily life. It hasb...
In this paper is presented a novel approach for human activity recognition (HAR) through complex dat...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
Applications for sensor-based human activity recognition use the latest algorithms for the detection...
Activity recognition allows ubiquitous mobile devices like smartphones to be context-aware and also ...
In Human Activity Recognition (HAR) supervised and semi-supervised training are important tools for ...
There is an increasing need for personalised and context-aware services in our everyday lives and we...
A major barrier to the personalized Human Activity Recognition using wearable sensors is that the pe...
Inter-subject variability in accelerometer-based activity recognition may significantly affect class...
Activity recognition has recently gained a lot of interest and there already exist several methods t...
Human Activity Recognition is a machine learning task for the classification of human physical activ...
Personalized activity recognition usually has the problem of highly biased activity patterns among d...
Human Activity Recognition has been primarily investigated as a machine learning classification task...
Human activity recognition using wearable devices is an active area of research in pervasive computi...
Reliable human activity recognition with wearable devices enables the development of human-centric p...
Wearable human activity recognition (HAR) is a widely application system for our daily life. It hasb...
In this paper is presented a novel approach for human activity recognition (HAR) through complex dat...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
Applications for sensor-based human activity recognition use the latest algorithms for the detection...
Activity recognition allows ubiquitous mobile devices like smartphones to be context-aware and also ...
In Human Activity Recognition (HAR) supervised and semi-supervised training are important tools for ...
There is an increasing need for personalised and context-aware services in our everyday lives and we...
A major barrier to the personalized Human Activity Recognition using wearable sensors is that the pe...
Inter-subject variability in accelerometer-based activity recognition may significantly affect class...
Activity recognition has recently gained a lot of interest and there already exist several methods t...
Human Activity Recognition is a machine learning task for the classification of human physical activ...
Personalized activity recognition usually has the problem of highly biased activity patterns among d...
Human Activity Recognition has been primarily investigated as a machine learning classification task...