An abstraction is a representation of an environment derived from sensor observation data. Generating an abstraction requires inferring explanations from an incomplete set of observations (often from the Web) and updating these explanations on the basis of new information. This process must be fast and efficient. The authors' approach overcomes these challenges to systematically derive abstractions from observations. The approach models perception through the integration of an abductive logic framework called Parsimonious Covering Theory with Semantic Web technologies. The authors demonstrate this approach's utility and scalability through use cases in the healthcare and weather domains.
%0 Journal Article
%1 HensonShethThirunarayan12internet
%A Henson, Cory
%A Sheth, Amit
%A Thirunarayan, Krishnaprasad
%D 2012
%J IEEE Internet Computing
%K v1205 ieee paper embedded ai semantic sensor web ontology data knowledge processing zzz.cps
%N 2
%P 26-34
%R 10.1109/MIC.2012.20
%T Semantic Perception: Converting Sensory Observations to Abstractions
%V 16
%X An abstraction is a representation of an environment derived from sensor observation data. Generating an abstraction requires inferring explanations from an incomplete set of observations (often from the Web) and updating these explanations on the basis of new information. This process must be fast and efficient. The authors' approach overcomes these challenges to systematically derive abstractions from observations. The approach models perception through the integration of an abductive logic framework called Parsimonious Covering Theory with Semantic Web technologies. The authors demonstrate this approach's utility and scalability through use cases in the healthcare and weather domains.
@article{HensonShethThirunarayan12internet,
abstract = {An abstraction is a representation of an environment derived from sensor observation data. Generating an abstraction requires inferring explanations from an incomplete set of observations (often from the Web) and updating these explanations on the basis of new information. This process must be fast and efficient. The authors' approach overcomes these challenges to systematically derive abstractions from observations. The approach models perception through the integration of an abductive logic framework called Parsimonious Covering Theory with Semantic Web technologies. The authors demonstrate this approach's utility and scalability through use cases in the healthcare and weather domains.},
added-at = {2012-05-30T10:47:30.000+0200},
author = {Henson, Cory and Sheth, Amit and Thirunarayan, Krishnaprasad},
biburl = {https://www.bibsonomy.org/bibtex/26f214e085d201db0a85bc00be55ed7e7/flint63},
doi = {10.1109/MIC.2012.20},
file = {IEEE Digital Library:2012/HensonShethThirunarayan12internet.pdf:PDF},
groups = {public},
interhash = {2ac4a896e3f9b77581c33ace4834f117},
intrahash = {6f214e085d201db0a85bc00be55ed7e7},
issn = {1089-7801},
journal = {IEEE Internet Computing},
keywords = {v1205 ieee paper embedded ai semantic sensor web ontology data knowledge processing zzz.cps},
number = 2,
pages = {26-34},
timestamp = {2018-04-16T12:02:02.000+0200},
title = {Semantic Perception: Converting Sensory Observations to Abstractions},
username = {flint63},
volume = 16,
year = 2012
}