Personal wearables such as smartphones or smartwatches are increasingly utilized in everyday life. Frequently, activity recognition is performed on these devices to estimate the current user status and trigger automated actions according to the user’s needs. In this article, we focus on the creation of a self-adaptive activity recognition system based on IMU that includes new sensors during runtime. Starting with a classifier based on GMM, the density model is adapted to new sensor data fully autonomously by issuing the marginalization property of normal distributions. To create a classifier from that, label inference is done, either based on the initial classifier or based on the training data. For evaluation, we used more than 10 h ...
Sensor-based activity recognition aims to predict users' activities from multi-dimensional streams o...
In this paper is presented a novel approach for human activity recognition (HAR) through complex dat...
Machine learning and deep learning have shown great promise in mobile sensing applications, includin...
Personal wearables such as smartphones or smartwatches are increasingly utilized in everyday life. F...
Numerous methods have been proposed to address different aspects of human activity recognition. Howe...
Mobile activity recognition is significant to the development of human-centric pervasive application...
Mobile activity recognition is significant to the development of human-centric pervasive application...
Human Activity Recognition (HAR) is an important application of smart wearable/mobile systems for ma...
Wearable-sensor-based activity recognition aims to predict users' activities from multi-dimensional ...
In this article, we study activity recognition in the context of sensor-rich environments. In these ...
Abstract. Activity-recognition classifiers, which label an activity based on sensor data, have decre...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Sensor-based activity recognition aims to predict users' activities from multi-dimensional streams o...
In this paper is presented a novel approach for human activity recognition (HAR) through complex dat...
Machine learning and deep learning have shown great promise in mobile sensing applications, includin...
Personal wearables such as smartphones or smartwatches are increasingly utilized in everyday life. F...
Numerous methods have been proposed to address different aspects of human activity recognition. Howe...
Mobile activity recognition is significant to the development of human-centric pervasive application...
Mobile activity recognition is significant to the development of human-centric pervasive application...
Human Activity Recognition (HAR) is an important application of smart wearable/mobile systems for ma...
Wearable-sensor-based activity recognition aims to predict users' activities from multi-dimensional ...
In this article, we study activity recognition in the context of sensor-rich environments. In these ...
Abstract. Activity-recognition classifiers, which label an activity based on sensor data, have decre...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
International audienceHuman Activity Recognition (HAR) have become an important part to some clinica...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Sensor-based activity recognition aims to predict users’ activities from multi-dimensional streams o...
Sensor-based activity recognition aims to predict users' activities from multi-dimensional streams o...
In this paper is presented a novel approach for human activity recognition (HAR) through complex dat...
Machine learning and deep learning have shown great promise in mobile sensing applications, includin...