In this work a learning technique to provide an Ambient Intelligence (smart space) system with the capacity of predicting variation events in its own internal state is presented. The system and the interacting users are modeled through the instantaneous state vectors obtained as output of two trained Self Organizing Map-based classifiers. The information processed by the system is collected by two sensors sets monitoring several internal and external system variables. Starting from the hypothesis that the user actions have a direct influence on internal system state variables (e.g. work load on personal computers computation or storage devices in a University laboratory, in our current test implementation) we developed a statistical voting ...
Monitoring human activities with visual sensors is still a challenge, especially when multiple targe...
Current Artificial Intelligence systems are bound to become increasingly interconnected to their sur...
Human behaviour analysis has important applications in the field of anomaly management, such as Inte...
In Smart Spaces (SSs), the capability of learning from experience is fundamental for autonomous adap...
Since the 1990s, we see an incremental miniaturization of computers, and, consequently, a computeriz...
Intelligent Environments are expected to act proactively, anticipating the user's needs and preferen...
Ambient Intelligence is a new research line in Artificial Intelligence field. Under this paradigm, u...
ISBN 978-0-7695-4843-2/12International audienceAmbient intelligence (AmI) systems are smart interact...
An important problem in intelligent environments is how the system can identify and model users’ act...
International audienceThe usual approach to ambient intelligence is an expert modeling of the device...
International audienceDue to rapid advances in networking and sensing technology we are witnessing a...
Conditional dependencies between the human activities and different contexts (such as location and t...
Smart robotic environments combine traditional (ambient) sensing devices and mobile robots. This com...
This paper describes a means of unsupervised learning of recurring patterns in user activity through...
Abstract—In this paper, techniques and related issues for the def-inition of a contextual knowledge ...
Monitoring human activities with visual sensors is still a challenge, especially when multiple targe...
Current Artificial Intelligence systems are bound to become increasingly interconnected to their sur...
Human behaviour analysis has important applications in the field of anomaly management, such as Inte...
In Smart Spaces (SSs), the capability of learning from experience is fundamental for autonomous adap...
Since the 1990s, we see an incremental miniaturization of computers, and, consequently, a computeriz...
Intelligent Environments are expected to act proactively, anticipating the user's needs and preferen...
Ambient Intelligence is a new research line in Artificial Intelligence field. Under this paradigm, u...
ISBN 978-0-7695-4843-2/12International audienceAmbient intelligence (AmI) systems are smart interact...
An important problem in intelligent environments is how the system can identify and model users’ act...
International audienceThe usual approach to ambient intelligence is an expert modeling of the device...
International audienceDue to rapid advances in networking and sensing technology we are witnessing a...
Conditional dependencies between the human activities and different contexts (such as location and t...
Smart robotic environments combine traditional (ambient) sensing devices and mobile robots. This com...
This paper describes a means of unsupervised learning of recurring patterns in user activity through...
Abstract—In this paper, techniques and related issues for the def-inition of a contextual knowledge ...
Monitoring human activities with visual sensors is still a challenge, especially when multiple targe...
Current Artificial Intelligence systems are bound to become increasingly interconnected to their sur...
Human behaviour analysis has important applications in the field of anomaly management, such as Inte...