Multiple vehicle fusion for a robust road condition estimation based on vehicle sensors and data mining

The road condition is an important factor for driving comfort and has impact on safety, economy and health. Delayed detection of defects lead to renewals which yields to complete roadblocks or traffic jams. Therefore, an early identification of road defects is desirable. Novel condition monitoring s...

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Main Authors: Julia Hofmockel, Johannes Masino, Jakob Thumm, Eric Sax, Frank Gauterin
Format: Article
Language:English
Published: Taylor & Francis Group 2018-01-01
Series:Cogent Engineering
Subjects:
Online Access:http://dx.doi.org/10.1080/23311916.2018.1449428
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spelling doaj-547dce48601446ac951e8128a1139a9c2021-03-02T14:46:47ZengTaylor & Francis GroupCogent Engineering2331-19162018-01-015110.1080/23311916.2018.14494281449428Multiple vehicle fusion for a robust road condition estimation based on vehicle sensors and data miningJulia Hofmockel0Johannes Masino1Jakob Thumm2Eric Sax3Frank Gauterin4Audi Electronics Venture GmbHInstitute of Vehicle System Technology, KITInstitute of Vehicle System Technology, KITInstitute for Information Processing Technologies, KITInstitute of Vehicle System Technology, KITThe road condition is an important factor for driving comfort and has impact on safety, economy and health. Delayed detection of defects lead to renewals which yields to complete roadblocks or traffic jams. Therefore, an early identification of road defects is desirable. Novel condition monitoring systems employ vehicles as sensor platforms and apply machine learning methods to predict the road condition based on the sensor data. The paper addresses the question how to combine the classification results from different vehicles to improve the final prediction. Different fusion strategies are investigated in various scenarios in a novel simulation. It is demonstrated that the performance of the classification can be improved compared to a majority vote or only considering one vehicle by taking the probability for the prediction of each vehicle into account. The probabilities follow a multinomial distribution and the precision matrix of the classifiers provide the best parameters. Overall, the results show that the application of the presented fusion strategies on road condition estimation greatly improve the performance and guarantee a robust detection of defects.http://dx.doi.org/10.1080/23311916.2018.1449428road infrastructure monitoringmultiple expert problemmultinomial distributionclassificationvehicle sensors
collection DOAJ
language English
format Article
sources DOAJ
author Julia Hofmockel
Johannes Masino
Jakob Thumm
Eric Sax
Frank Gauterin
spellingShingle Julia Hofmockel
Johannes Masino
Jakob Thumm
Eric Sax
Frank Gauterin
Multiple vehicle fusion for a robust road condition estimation based on vehicle sensors and data mining
Cogent Engineering
road infrastructure monitoring
multiple expert problem
multinomial distribution
classification
vehicle sensors
author_facet Julia Hofmockel
Johannes Masino
Jakob Thumm
Eric Sax
Frank Gauterin
author_sort Julia Hofmockel
title Multiple vehicle fusion for a robust road condition estimation based on vehicle sensors and data mining
title_short Multiple vehicle fusion for a robust road condition estimation based on vehicle sensors and data mining
title_full Multiple vehicle fusion for a robust road condition estimation based on vehicle sensors and data mining
title_fullStr Multiple vehicle fusion for a robust road condition estimation based on vehicle sensors and data mining
title_full_unstemmed Multiple vehicle fusion for a robust road condition estimation based on vehicle sensors and data mining
title_sort multiple vehicle fusion for a robust road condition estimation based on vehicle sensors and data mining
publisher Taylor & Francis Group
series Cogent Engineering
issn 2331-1916
publishDate 2018-01-01
description The road condition is an important factor for driving comfort and has impact on safety, economy and health. Delayed detection of defects lead to renewals which yields to complete roadblocks or traffic jams. Therefore, an early identification of road defects is desirable. Novel condition monitoring systems employ vehicles as sensor platforms and apply machine learning methods to predict the road condition based on the sensor data. The paper addresses the question how to combine the classification results from different vehicles to improve the final prediction. Different fusion strategies are investigated in various scenarios in a novel simulation. It is demonstrated that the performance of the classification can be improved compared to a majority vote or only considering one vehicle by taking the probability for the prediction of each vehicle into account. The probabilities follow a multinomial distribution and the precision matrix of the classifiers provide the best parameters. Overall, the results show that the application of the presented fusion strategies on road condition estimation greatly improve the performance and guarantee a robust detection of defects.
topic road infrastructure monitoring
multiple expert problem
multinomial distribution
classification
vehicle sensors
url http://dx.doi.org/10.1080/23311916.2018.1449428
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AT johannesmasino multiplevehiclefusionforarobustroadconditionestimationbasedonvehiclesensorsanddatamining
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