AbstractInternet-of-Things (IoT) is the latest buzzword,
havings its origins in the erstwhile Sensor Networks. Sensor
Networks produce a large amount of data. According to
the needs this data requires to be processed, delivered and
accessed. This processed data when made available with
the physical device location, user preferences, time constraints;
generically called as context-awareness; is widely
referred to as the core function for ubiquitous systems. To
our best knowledge there is lack of analysis of context information
fusion for ubiquitous sensor networks. Adopting
appropriate information fusion techniques can help
in screening noisy measurements, control data in the network
and take necessary inferences that can help in contextual
computing. In this paper we try and explore different
context information fusion techniques by comparing
a large number of solutions, their methods, architectures
and models. All the surveyed techniques can be adapted
to the IoT framework.