SignalKG: Towards Reasoning about the Underlying Causes of Sensor
Observations
International Workshop on the Semantic Web (SW), 2022
Abstract
This paper demonstrates our vision for knowledge graphs that assist machines to reason about the cause of signals observed by sensors. We show how the approach allows for constructing smarter surveillance systems that reason about the most likely cause (e.g., an attacker breaking a window) of a signal rather than acting directly on the received signal without consideration for how it was produced.
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