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Defect-Repairable Latent Feature Extraction of Driving Behavior via a Deep Sparse Autoencoder

Data representing driving behavior, as measured by various sensors installed in a vehicle, are collected as multi-dimensional sensor time-series data. These data often include redundant information, e.g., both the speed of wheels and the engine speed represent the velocity of the vehicle. Redundant...

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Autores principales: Liu, Hailong, Taniguchi, Tadahiro, Takenaka, Kazuhito, Bando, Takashi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5856181/
https://www.ncbi.nlm.nih.gov/pubmed/29462931
http://dx.doi.org/10.3390/s18020608
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author Liu, Hailong
Taniguchi, Tadahiro
Takenaka, Kazuhito
Bando, Takashi
author_facet Liu, Hailong
Taniguchi, Tadahiro
Takenaka, Kazuhito
Bando, Takashi
author_sort Liu, Hailong
collection PubMed
description Data representing driving behavior, as measured by various sensors installed in a vehicle, are collected as multi-dimensional sensor time-series data. These data often include redundant information, e.g., both the speed of wheels and the engine speed represent the velocity of the vehicle. Redundant information can be expected to complicate the data analysis, e.g., more factors need to be analyzed; even varying the levels of redundancy can influence the results of the analysis. We assume that the measured multi-dimensional sensor time-series data of driving behavior are generated from low-dimensional data shared by the many types of one-dimensional data of which multi-dimensional time-series data are composed. Meanwhile, sensor time-series data may be defective because of sensor failure. Therefore, another important function is to reduce the negative effect of defective data when extracting low-dimensional time-series data. This study proposes a defect-repairable feature extraction method based on a deep sparse autoencoder (DSAE) to extract low-dimensional time-series data. In the experiments, we show that DSAE provides high-performance latent feature extraction for driving behavior, even for defective sensor time-series data. In addition, we show that the negative effect of defects on the driving behavior segmentation task could be reduced using the latent features extracted by DSAE.
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spelling pubmed-58561812018-03-20 Defect-Repairable Latent Feature Extraction of Driving Behavior via a Deep Sparse Autoencoder Liu, Hailong Taniguchi, Tadahiro Takenaka, Kazuhito Bando, Takashi Sensors (Basel) Article Data representing driving behavior, as measured by various sensors installed in a vehicle, are collected as multi-dimensional sensor time-series data. These data often include redundant information, e.g., both the speed of wheels and the engine speed represent the velocity of the vehicle. Redundant information can be expected to complicate the data analysis, e.g., more factors need to be analyzed; even varying the levels of redundancy can influence the results of the analysis. We assume that the measured multi-dimensional sensor time-series data of driving behavior are generated from low-dimensional data shared by the many types of one-dimensional data of which multi-dimensional time-series data are composed. Meanwhile, sensor time-series data may be defective because of sensor failure. Therefore, another important function is to reduce the negative effect of defective data when extracting low-dimensional time-series data. This study proposes a defect-repairable feature extraction method based on a deep sparse autoencoder (DSAE) to extract low-dimensional time-series data. In the experiments, we show that DSAE provides high-performance latent feature extraction for driving behavior, even for defective sensor time-series data. In addition, we show that the negative effect of defects on the driving behavior segmentation task could be reduced using the latent features extracted by DSAE. MDPI 2018-02-16 /pmc/articles/PMC5856181/ /pubmed/29462931 http://dx.doi.org/10.3390/s18020608 Text en © 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Liu, Hailong
Taniguchi, Tadahiro
Takenaka, Kazuhito
Bando, Takashi
Defect-Repairable Latent Feature Extraction of Driving Behavior via a Deep Sparse Autoencoder
title Defect-Repairable Latent Feature Extraction of Driving Behavior via a Deep Sparse Autoencoder
title_full Defect-Repairable Latent Feature Extraction of Driving Behavior via a Deep Sparse Autoencoder
title_fullStr Defect-Repairable Latent Feature Extraction of Driving Behavior via a Deep Sparse Autoencoder
title_full_unstemmed Defect-Repairable Latent Feature Extraction of Driving Behavior via a Deep Sparse Autoencoder
title_short Defect-Repairable Latent Feature Extraction of Driving Behavior via a Deep Sparse Autoencoder
title_sort defect-repairable latent feature extraction of driving behavior via a deep sparse autoencoder
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5856181/
https://www.ncbi.nlm.nih.gov/pubmed/29462931
http://dx.doi.org/10.3390/s18020608
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