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A New Method of Dimensionality Reduction for Large Time Series Applied to Accelerometer Wristbands’ Signals

Comunicació presentada a: 15th International Joint Conference on Biomedical Engineering Systems and Technologies (BIOSTEC 2022)

Feature extraction for high-dimensional time series has become a topic of great importance in recent years. In the medical field, the information needed to predict emotions, stress, epileptic seizures, heart attacks, and other diseases, can be provided by body sensors in the form of time series signals. This work intends to provide a way for these devices to save the relevant information, using little storage memory, by defining a new feature extraction method. The method proposed in this work relies on the relevant data associated with the “changes” in the time series. These changes are identified according to the conditional probabilities of passing from one state to another during the time series, as well as the “relevance” of each state. We show the results of this method with an experiment based on accelerometers data recorded by the ©ActiGraph wGT3X-BT wristband to recognize sedentary behavior. After applying this method, it was achieved to reduce time series frames of dimension 360, to vectors of dimension 12; while the accuracy of their classification was 84%

This work was carry out with the support of the Generalitat de Catalunya 2017 SGR 1551, and funded by the Grants for the recruitment of new research staff (FI), provided by the Agència de Gestió d’Ajuts Universitaris i de Recerca (AGAUR)

Autor: García Pavioni, Alihuén
López Ibáñez, Beatriz
Data: 2021
Resum: Comunicació presentada a: 15th International Joint Conference on Biomedical Engineering Systems and Technologies (BIOSTEC 2022)
Feature extraction for high-dimensional time series has become a topic of great importance in recent years. In the medical field, the information needed to predict emotions, stress, epileptic seizures, heart attacks, and other diseases, can be provided by body sensors in the form of time series signals. This work intends to provide a way for these devices to save the relevant information, using little storage memory, by defining a new feature extraction method. The method proposed in this work relies on the relevant data associated with the “changes” in the time series. These changes are identified according to the conditional probabilities of passing from one state to another during the time series, as well as the “relevance” of each state. We show the results of this method with an experiment based on accelerometers data recorded by the ©ActiGraph wGT3X-BT wristband to recognize sedentary behavior. After applying this method, it was achieved to reduce time series frames of dimension 360, to vectors of dimension 12; while the accuracy of their classification was 84%
This work was carry out with the support of the Generalitat de Catalunya 2017 SGR 1551, and funded by the Grants for the recruitment of new research staff (FI), provided by the Agència de Gestió d’Ajuts Universitaris i de Recerca (AGAUR)
Format: application/pdf
Accés al document: http://hdl.handle.net/10256/19667
Llenguatge: eng
Drets: Tots els drets reservats
Matèria: Acceleròmetres
Accelerometers
Intel·ligència artificial
Artificial intelligence
Títol: A New Method of Dimensionality Reduction for Large Time Series Applied to Accelerometer Wristbands’ Signals
Tipus: info:eu-repo/semantics/preprint
Repositori: DUGiDocs

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