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  •   University of Thessaly Institutional Repository
  • Επιστημονικές Δημοσιεύσεις Μελών ΠΘ (ΕΔΠΘ)
  • Δημοσιεύσεις σε περιοδικά, συνέδρια, κεφάλαια βιβλίων κλπ.
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  •   University of Thessaly Institutional Repository
  • Επιστημονικές Δημοσιεύσεις Μελών ΠΘ (ΕΔΠΘ)
  • Δημοσιεύσεις σε περιοδικά, συνέδρια, κεφάλαια βιβλίων κλπ.
  • View Item
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Change detection and convolution neural networks for fall recognition

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Author
Georgakopoulos S.V., Tasoulis S.K., Mallis G.I., Vrahatis A.G., Plagianakos V.P., Maglogiannis I.G.
Date
2020
Language
en
DOI
10.1007/s00521-020-05208-8
Keyword
Deep learning
Delay control systems
Information management
Motion tracking
Neural networks
Risk assessment
Change detection
Computational resources
Convolution neural network
Fall recognition
Prediction accuracy
Reliable results
Research challenges
Signal classification
Learning systems
Springer Science and Business Media Deutschland GmbH
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Abstract
Accurate fall detection is a crucial research challenge since the time delay from fall to first aid is a key factor that determines the consequences of a fall. Wearable sensors allow a reliable way for motion tracking, allowing immediate detection of high-risk falls via a machine learning framework. Toward this direction, accelerometer devices are widely used for the assessment of fall risk. Although there exist a plethora of studies under this perspective, several challenges still remain, such as dealing simultaneously with extremely demanding data management, power consumption and prediction accuracy. In this work, we propose a complete methodology based on the cooperation of deep learning for signal classification along with a lightweight control chart method for change detection. Our basic assumption is that it is possible to control computational resources by selectively allowing the operation of a relatively heavyweight, but very efficient classifier, when it is truly required. The proposed methodology was applied to real experimental data providing the reliable results that justify the original hypothesis. © 2020, Springer-Verlag London Ltd., part of Springer Nature.
URI
http://hdl.handle.net/11615/72070
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  • Δημοσιεύσεις σε περιοδικά, συνέδρια, κεφάλαια βιβλίων κλπ. [19735]
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