Activity recognition from an on-body sensor network enables context-aware applications in wearable computing. A guaranteed classification accuracy is desirable while optimizing power consumption to ensure the system’s wearability. In this paper, we investigate the benefits of dynamic sensor selection in order to use efficiently available energy while achieving a desired activity recognition accuracy. For this purpose we introduce and characterize an activity recognition method with an underlying run-time sensor selection scheme. The system relies on a meta-classifier that fuses the information of classifiers operating on individual sensors. Sensors are selected according to their contribution to classification accuracy as assessed during sy...
Wearable devices have become increasingly popular in recent years, and they offer a great opportunit...
Abstract—Advances in sensing, portable computing devices, and wireless communication has lead to an ...
Data driven approaches for human activity recognition learn from pre-existent large-scale datasets t...
none7Activity recognition from an on-body sensor network enables context-aware applications in wear...
Wearable gesture recognition enables context aware applications and unobtrusive HCI. It is realized ...
Wearable gesture recognition enables context aware applications and unobtrusive HCI. It is realized ...
Wearable gesture recognition enables context aware applications and unobtrusive HCI. It is realized ...
Wearable gesture recognition enables context aware applications and unobtrusive HCI. It is realized ...
Activity recognition from on-body sensors is affected by sensor degradation, interconnections failur...
Recognizing user activities using body-worn, miniaturized sensor nodes enables wearable computers to...
Recognizing user activities using body-worn, miniaturized sensor nodes enables wearable computers to...
Human Activity Recognition provides valuable contextual information for wellbeing, healthcare, and s...
The rapid growing of the population age in industrialized societies calls for advanced tools to cont...
Wearable devices have become increasingly popular in recent years, and they offer a great opportunit...
Wearable devices have become increasingly popular in recent years, and they offer a great opportunit...
Wearable devices have become increasingly popular in recent years, and they offer a great opportunit...
Abstract—Advances in sensing, portable computing devices, and wireless communication has lead to an ...
Data driven approaches for human activity recognition learn from pre-existent large-scale datasets t...
none7Activity recognition from an on-body sensor network enables context-aware applications in wear...
Wearable gesture recognition enables context aware applications and unobtrusive HCI. It is realized ...
Wearable gesture recognition enables context aware applications and unobtrusive HCI. It is realized ...
Wearable gesture recognition enables context aware applications and unobtrusive HCI. It is realized ...
Wearable gesture recognition enables context aware applications and unobtrusive HCI. It is realized ...
Activity recognition from on-body sensors is affected by sensor degradation, interconnections failur...
Recognizing user activities using body-worn, miniaturized sensor nodes enables wearable computers to...
Recognizing user activities using body-worn, miniaturized sensor nodes enables wearable computers to...
Human Activity Recognition provides valuable contextual information for wellbeing, healthcare, and s...
The rapid growing of the population age in industrialized societies calls for advanced tools to cont...
Wearable devices have become increasingly popular in recent years, and they offer a great opportunit...
Wearable devices have become increasingly popular in recent years, and they offer a great opportunit...
Wearable devices have become increasingly popular in recent years, and they offer a great opportunit...
Abstract—Advances in sensing, portable computing devices, and wireless communication has lead to an ...
Data driven approaches for human activity recognition learn from pre-existent large-scale datasets t...