Collaborative Sensing with Interactive Learning using Dynamic Intelligent Virtual Sensors

DSpace Repository

Collaborative Sensing with Interactive Learning using Dynamic Intelligent Virtual Sensors

Details

Files for download
Icon
Overview of item record
Publication Article, peer reviewed scientific
Title Collaborative Sensing with Interactive Learning using Dynamic Intelligent Virtual Sensors
Author Tegen, Agnes ; Davidsson, Paul ; Mihailescu, Radu-Casian ; Persson, Jan A.
Research Centre Internet of Things and People Research Centre (IOTAP)
Date 2019
English abstract
Although the availability of sensor data is becoming prevalent across many domains, it still remains a challenge to make sense of the sensor data in an efficient and effective manner in order to provide users with relevant services. The concept of virtual sensors provides a step towards this goal, however they are often used to denote homogeneous types of data, generally retrieved from a predetermined group of sensors. The DIVS (Dynamic Intelligent Virtual Sensors) concept was introduced in previous work to extend and generalize the notion of a virtual sensor to a dynamic setting with heterogenous sensors. This paper introduces a refined version of the DIVS concept by integrating an interactive machine learning mechanism, which enables the system to take input from both the user and the physical world. The paper empirically validates some of the properties of the DIVS concept. In particular, we are concerned with the distribution of different budget allocations for labelled data, as well as proactive labelling user strategies. We report on results suggesting that a relatively good accuracy can be achieved despite a limited budget in an environment with dynamic sensor availability, while proactive labeling ensures further improvements in performance.
DOI https://doi.org/10.3390/s19030477 (link to publisher's fulltext.)
Link https://www.mdpi.com/1424-8220/19/3/477 .Icon
Publisher MDPI
Host/Issue Sensors;3
Volume 19
ISSN 1424-8220
Language eng (iso)
Subject virtual sensors
sensor fusion
machine learning
dynamic environments
Internet of Things
Technology
Research Subject Categories::TECHNOLOGY
Handle http://hdl.handle.net/2043/30112 Permalink to this page
Facebook

This item appears in the following Collection(s)

Details

Search


Browse

My Account

Statistics