Knowledge Agora



Scientific Article details

Title Natural Language Understanding for Multi-Level Distributed Intelligent Virtual Sensors
ID_Doc 42881
Authors Mihailescu, RC; Kyriakou, G; Papangelis, A
Title Natural Language Understanding for Multi-Level Distributed Intelligent Virtual Sensors
Year 2020
Published Iot, 1, 2
DOI 10.3390/iot1020027
Abstract In this paper we address the problem of automatic sensor composition for servicing human-interpretable high-level tasks. To this end, we introduce multi-level distributed intelligent virtual sensors (multi-level DIVS) as an overlay framework for a given mesh of physical and/or virtual sensors already deployed in the environment. The goal for multi-level DIVS is two-fold: (i) to provide a convenient way for the user to specify high-level sensing tasks; (ii) to construct the computational graph that provides the correct output given a specific sensing task. For (i) we resort to a conversational user interface, which is an intuitive and user-friendly manner in which the user can express the sensing problem, i.e., natural language queries, while for (ii) we propose a deep learning approach that establishes the correspondence between the natural language queries and their virtual sensor representation. Finally, we evaluate and demonstrate the feasibility of our approach in the context of a smart city setup.
Author Keywords internet of things; virtual sensing; deep learning; natural language understanding
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Emerging Sources Citation Index (ESCI)
EID WOS:001199323600001
WoS Category Telecommunications
Research Area Telecommunications
PDF https://www.mdpi.com/2624-831X/1/2/27/pdf
Similar atricles
Scroll