Fr. 56.50

A Reliability-Aware Fusion Concept Toward Robust Ego-Lane Estimation Incorporating Multiple Sources

English · Paperback / Softback

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Description

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To tackle the challenges of the road estimation task, many works employ a fusion of multiple sources. By that, a commonly made assumption is that the sources always are equally reliable. However, this assumption is inappropriate since each source has certain advantages and drawbacks depending on the operational scenarios. Therefore, Tuan Tran Nguyen proposes a novel concept by incorporating reliabilities into the multi-source fusion so that the road estimation task can alternately select only the most reliable sources. Thereby, the author estimates the reliability for each source online using classifiers trained with the sensor measurements, the past performance and the context. Using real data recordings, he shows via experimental results that the presented reliability-aware fusion increases the availability of automated driving up to 7 percentage points compared to the average fusion.About the Author:

Tuan Tran Nguyen received the Master's degree incomputer science and the Ph.D. degree from Otto-von-Guericke University Magdeburg, Germany, in 2013 and 2019, respectively. His research focuses on methods and architectures for reliability-based sensor fusion in intelligent vehicles.

List of contents

Reliability-Aware Fusion Framework.- Assessing and Learning Reliability for Ego-Lane Estimation.- Reliability-Based Ego-Lane Estimation Using Multiple Sources.

About the author

Tuan Tran Nguyen received the Master's degree in computer science and the Ph.D. degree from Otto-von-Guericke University Magdeburg, Germany, in 2013 and 2019, respectively. His research focuses on methods and architectures for reliability-based sensor fusion in intelligent vehicles.

Summary

To tackle the challenges of the road estimation task, many works employ a fusion of multiple sources. By that, a commonly made assumption is that the sources always are equally reliable. However, this assumption is inappropriate since each source has certain advantages and drawbacks depending on the operational scenarios. Therefore, Tuan Tran Nguyen proposes a novel concept by incorporating reliabilities into the multi-source fusion so that the road estimation task can alternately select only the most reliable sources. Thereby, the author estimates the reliability for each source online using classifiers trained with the sensor measurements, the past performance and the context. Using real data recordings, he shows via experimental results that the presented reliability-aware fusion increases the availability of automated driving up to 7 percentage points compared to the average fusion.About the Author:

Tuan Tran Nguyen received the Master's degree incomputer science and the Ph.D. degree from Otto-von-Guericke University Magdeburg, Germany, in 2013 and 2019, respectively. His research focuses on methods and architectures for reliability-based sensor fusion in intelligent vehicles.

Product details

Authors Tuan Tran Nguyen
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 01.01.2019
 
EAN 9783658269487
ISBN 978-3-658-26948-7
No. of pages 164
Dimensions 149 mm x 211 mm x 12 mm
Weight 260 g
Illustrations XXIII, 164 p. 84 illus., 25 illus. in color.
Series AutoUni - Schriftenreihe
AutoUni – Schriftenreihe
Subjects Natural sciences, medicine, IT, technology > Technology > General, dictionaries

C, Fahrzeugbau, Data Mining, Robotik, Robotics, Artificial Intelligence, Wissensbasierte Systeme, Expertensysteme, Neural Networks, engineering, Automotive Engineering, Automotive technology and trades, Data Mining and Knowledge Discovery, Computational Intelligence, Expert systems / knowledge-based systems, Random Forests, Reliability-Aware Fusion, Learning Reliability

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