2009 | OriginalPaper | Chapter
Using Dempster-Shafer Theory of Evidence for Situation Inference
Authors : Susan McKeever, Juan Ye, Lorcan Coyle, Simon Dobson
Published in: Smart Sensing and Context
Publisher: Springer Berlin Heidelberg
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In the domain of ubiquitous computing, the ability to identify the occurrence of situations is a core function of being ’context-aware’. Given the uncertain nature of sensor information and inference rules, reasoning techniques that cater for uncertainty hold promise for enabling the inference process. In our work, we apply the Dempster Shafer theory of evidence to infer situation occurrence with minimal use of training data. We describe a set of evidential operations for sensor mass functions using context quality and evidence accumulation for continuous situation detection. We demonstrate how our approach enables situation inference with uncertain information using a case study based on a published smart home activity data set.