As computing systems become ever more pervasive, there is an increasing need for them to understand and adapt to the state of the environment around them: that is, their context. This understanding comes with considerable reliance on a range of sensors. However, portable devices are also very constrained in terms of power, and hence the amount of sensing must be minimised. In this paper, we present a machine learning architecture for context awareness which is designed to balance the sampling rates (and hence energy consumption) of individual sensors with the significance of the input from that sensor. This significance is based on predictions of the likely next context. The architecture is implemented using a selected range of user context...
The proliferation of pervasive computing devices with unprecedented sensing, communication, and comp...
Looking for optimizing the battery consumption is an open issue, and we think it is feasible if we a...
This paper introduces an approach that combines machine learning and adaptive hardware to improve th...
Although mobile devices keep getting smaller and more powerful, their interface with the user is sti...
Abstract—Context-aware mobile systems have gained a re-markable popularity in recent years. Mobile d...
The ever-increasing technological advances in embedded systems engineering, together with the prolif...
Mobile embedded systems often have strong limitations regarding available resources. In this paper w...
Mobile embedded systems often have strong limitations regarding available resources. In this paper w...
With the advent of smart, inexpensive devices and a highly connected world, a need for smart service...
Investigating and extracting users' context has always been a main drive for research in the field o...
Adoption of smart mobile devices (smartphones, wearables, etc.) is rapidly growing. There are alread...
Context-aware middlewares support applications with context management. Current middlewares support ...
In building a smart space, it becomes more critical to develop a recognition system which enables to...
This book proposes novel context-inferring algorithms and generic framework designs to enhance the e...
Context-aware computing aims at making mobile devices sensitive to the social and physical settings ...
The proliferation of pervasive computing devices with unprecedented sensing, communication, and comp...
Looking for optimizing the battery consumption is an open issue, and we think it is feasible if we a...
This paper introduces an approach that combines machine learning and adaptive hardware to improve th...
Although mobile devices keep getting smaller and more powerful, their interface with the user is sti...
Abstract—Context-aware mobile systems have gained a re-markable popularity in recent years. Mobile d...
The ever-increasing technological advances in embedded systems engineering, together with the prolif...
Mobile embedded systems often have strong limitations regarding available resources. In this paper w...
Mobile embedded systems often have strong limitations regarding available resources. In this paper w...
With the advent of smart, inexpensive devices and a highly connected world, a need for smart service...
Investigating and extracting users' context has always been a main drive for research in the field o...
Adoption of smart mobile devices (smartphones, wearables, etc.) is rapidly growing. There are alread...
Context-aware middlewares support applications with context management. Current middlewares support ...
In building a smart space, it becomes more critical to develop a recognition system which enables to...
This book proposes novel context-inferring algorithms and generic framework designs to enhance the e...
Context-aware computing aims at making mobile devices sensitive to the social and physical settings ...
The proliferation of pervasive computing devices with unprecedented sensing, communication, and comp...
Looking for optimizing the battery consumption is an open issue, and we think it is feasible if we a...
This paper introduces an approach that combines machine learning and adaptive hardware to improve th...