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The following topics are dealt with: pervasive computing; context reasoning; quality of service; mobile peer-to-peer computing; ubiquitous communication; social networking; pervasive learning; health care; wireless sensor network; middleware; pervasive wireless networking; smart environment; and World Wide Web.
Mobile navigation service is one of the most important location based services. With the rapid advances in enabling technologies for ubiquitous computing, more and more active or passive devices/sensors are augmented in the indoor environment, indoor environment has become smarter. This paper proposes that by introducing the notions of smart environment and ambient intelligent, a ubiquitous indoor...
In this paper we present the model of smart collaborative objects that can share the responsibilities of backend server by local processing and collaborating with other objects. We propose the technique to adapt the local inferring using the distributed knowledgebase and a framework for development of context aware software for smart environment We also propose a platform for collaborative object...
Smart environments that can adapt based on the current context are extremely useful for automating even simple, mundane tasks. The key components of such an environment are sources that can extract the raw context, a synthesizer that can draw inferences by aggregating the context from different sources, and a set of policies that drive the adaptation. In this paper, we describe a context-based adaptation...
This paper summarizes our experience in designing and modeling single habitant and multiple inhabitant smart environments based on learning and prediction based paradigm
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