Anticipating user localization by making accurate predictions on its indoor movement patterns is a fundamental challenge for achieving higher degrees of personalization and reactivity in smart-home environments. We propose an approach to real-time movement forecasting founding on the efficient Reservoir Computing paradigm, predicting user movements based on streams of Received Signal Strengths collected by wireless motes distributed in the home environment. The ability of the system to generalize its predictive performance to unseen ambient configurations is experimentally assessed in challenging conditions, comprising external test scenarios collected in home environments that are not included in the training set. Experimental results suggest that the system can effectively generalize acquired knowledge to novel smart-home setups, thereby delivering an higher level of personalization while decreasing costs for installation and setup.

Predicting user movements in heterogeneous indoor environments by reservoir computing

Barsocchi P;
2011

Abstract

Anticipating user localization by making accurate predictions on its indoor movement patterns is a fundamental challenge for achieving higher degrees of personalization and reactivity in smart-home environments. We propose an approach to real-time movement forecasting founding on the efficient Reservoir Computing paradigm, predicting user movements based on streams of Received Signal Strengths collected by wireless motes distributed in the home environment. The ability of the system to generalize its predictive performance to unseen ambient configurations is experimentally assessed in challenging conditions, comprising external test scenarios collected in home environments that are not included in the training set. Experimental results suggest that the system can effectively generalize acquired knowledge to novel smart-home setups, thereby delivering an higher level of personalization while decreasing costs for installation and setup.
2011
Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI
Inglese
Mehul Bhatt, Hans Guesgen, Juan Carlos Augusto
Space, Time and Ambient Intelligence Workshop. International Joint Conference on Artificial Intelligence
1
6
http://ijcai-11.iiia.csic.es/files/proceedings/Space,%20Time%20and%20Ambient%20Intelligence%20Proceeding.pdf
STAMI
Barcelona
SPAGNA
Sì, ma tipo non specificato
16 July 2011
Barcelona, Spain
Received signal strength
Wireless sensor network
AAL
Reservoir Computing
Also published online as part of Report Series of the Transregional Collaborative Research Center SFB/TR 8 Spatial Cognition, Universität Bremen / Universität Freiburg. SFB/TR 8 Reports, Bremen, Germany. - Area di valutazione 15a - Scienze e tecnologie per una società dell'informazione e della comunicazione
1
restricted
Bacciu D.; Barsocchi P.; Chessa S.; Gallicchio C.; Micheli A.
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
   Robotics UBIquitous COgnitive Network
   RUBICON
   FP7
   269914
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/178949
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