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Towards building reliable deep learning based driver identification systems

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Autorschaft

Organisationseinheiten

Externe Organisationen

  • Volkswagen AG

Details

OriginalspracheEnglisch
Titel des Sammelwerks2022 IEEE 34th International Conference on Tools with Artificial Intelligence, ICTAI 2022
Herausgeber/-innenMarek Reformat, Du Zhang, Nikolaos G. Bourbakis
Seiten766-773
Seitenumfang8
ISBN (elektronisch)9798350397444
PublikationsstatusVeröffentlicht - 2022
Veranstaltung34th IEEE International Conference on Tools with Artificial Intelligence, ICTAI 2022 - Virtual, Online, China
Dauer: 31 Okt. 20222 Nov. 2022

Publikationsreihe

NameProceedings - International Conference on Tools with Artificial Intelligence, ICTAI
Band2022-October
ISSN (Print)1082-3409

Abstract

Recent studies have shown the potential of leveraging neural networks to achieve high levels of accuracy in re-identifying drivers by learning latent features from vehicular sensor data. However, deploying such networks in real-world applications (like theft detection or fleet management) requires re-training the networks with new data to transfer the learnings from the initial dataset to the target drivers. In this paper, we highlight the importance of the evaluation of such networks in both phases, initial training and transfer learning. Our evaluation shows that the performance of existing solutions drops significantly, when applied to new drivers that have not been seen by the networks in the initial training phase. Moreover, we propose a deep neural network that outperforms state-of-the-art solutions in both phases. For the evaluation of the transfer learning phase, we use a dataset from a real-world ride-sharing service that has not been used in the initial training.

ASJC Scopus Sachgebiete

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Towards building reliable deep learning based driver identification systems. / Zeng, Li; Al-Rifai, Mohammad; Nolting, Michael et al.
2022 IEEE 34th International Conference on Tools with Artificial Intelligence, ICTAI 2022. Hrsg. / Marek Reformat; Du Zhang; Nikolaos G. Bourbakis. 2022. S. 766-773 (Proceedings - International Conference on Tools with Artificial Intelligence, ICTAI; Band 2022-October).

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Zeng, L, Al-Rifai, M, Nolting, M & Nejdl, W 2022, Towards building reliable deep learning based driver identification systems. in M Reformat, D Zhang & NG Bourbakis (Hrsg.), 2022 IEEE 34th International Conference on Tools with Artificial Intelligence, ICTAI 2022. Proceedings - International Conference on Tools with Artificial Intelligence, ICTAI, Bd. 2022-October, S. 766-773, 34th IEEE International Conference on Tools with Artificial Intelligence, ICTAI 2022, Virtual, Online, China, 31 Okt. 2022. https://doi.org/10.1109/ICTAI56018.2022.00118
Zeng, L., Al-Rifai, M., Nolting, M., & Nejdl, W. (2022). Towards building reliable deep learning based driver identification systems. In M. Reformat, D. Zhang, & N. G. Bourbakis (Hrsg.), 2022 IEEE 34th International Conference on Tools with Artificial Intelligence, ICTAI 2022 (S. 766-773). (Proceedings - International Conference on Tools with Artificial Intelligence, ICTAI; Band 2022-October). https://doi.org/10.1109/ICTAI56018.2022.00118
Zeng L, Al-Rifai M, Nolting M, Nejdl W. Towards building reliable deep learning based driver identification systems. in Reformat M, Zhang D, Bourbakis NG, Hrsg., 2022 IEEE 34th International Conference on Tools with Artificial Intelligence, ICTAI 2022. 2022. S. 766-773. (Proceedings - International Conference on Tools with Artificial Intelligence, ICTAI). doi: 10.1109/ICTAI56018.2022.00118
Zeng, Li ; Al-Rifai, Mohammad ; Nolting, Michael et al. / Towards building reliable deep learning based driver identification systems. 2022 IEEE 34th International Conference on Tools with Artificial Intelligence, ICTAI 2022. Hrsg. / Marek Reformat ; Du Zhang ; Nikolaos G. Bourbakis. 2022. S. 766-773 (Proceedings - International Conference on Tools with Artificial Intelligence, ICTAI).
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title = "Towards building reliable deep learning based driver identification systems",
abstract = "Recent studies have shown the potential of leveraging neural networks to achieve high levels of accuracy in re-identifying drivers by learning latent features from vehicular sensor data. However, deploying such networks in real-world applications (like theft detection or fleet management) requires re-training the networks with new data to transfer the learnings from the initial dataset to the target drivers. In this paper, we highlight the importance of the evaluation of such networks in both phases, initial training and transfer learning. Our evaluation shows that the performance of existing solutions drops significantly, when applied to new drivers that have not been seen by the networks in the initial training phase. Moreover, we propose a deep neural network that outperforms state-of-the-art solutions in both phases. For the evaluation of the transfer learning phase, we use a dataset from a real-world ride-sharing service that has not been used in the initial training.",
keywords = "driver identification, neural networks, transfer learning",
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Download

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T1 - Towards building reliable deep learning based driver identification systems

AU - Zeng, Li

AU - Al-Rifai, Mohammad

AU - Nolting, Michael

AU - Nejdl, Wolfgang

N1 - Funding Information: The first author has received funding from Volkswagen AG to conduct this research.

PY - 2022

Y1 - 2022

N2 - Recent studies have shown the potential of leveraging neural networks to achieve high levels of accuracy in re-identifying drivers by learning latent features from vehicular sensor data. However, deploying such networks in real-world applications (like theft detection or fleet management) requires re-training the networks with new data to transfer the learnings from the initial dataset to the target drivers. In this paper, we highlight the importance of the evaluation of such networks in both phases, initial training and transfer learning. Our evaluation shows that the performance of existing solutions drops significantly, when applied to new drivers that have not been seen by the networks in the initial training phase. Moreover, we propose a deep neural network that outperforms state-of-the-art solutions in both phases. For the evaluation of the transfer learning phase, we use a dataset from a real-world ride-sharing service that has not been used in the initial training.

AB - Recent studies have shown the potential of leveraging neural networks to achieve high levels of accuracy in re-identifying drivers by learning latent features from vehicular sensor data. However, deploying such networks in real-world applications (like theft detection or fleet management) requires re-training the networks with new data to transfer the learnings from the initial dataset to the target drivers. In this paper, we highlight the importance of the evaluation of such networks in both phases, initial training and transfer learning. Our evaluation shows that the performance of existing solutions drops significantly, when applied to new drivers that have not been seen by the networks in the initial training phase. Moreover, we propose a deep neural network that outperforms state-of-the-art solutions in both phases. For the evaluation of the transfer learning phase, we use a dataset from a real-world ride-sharing service that has not been used in the initial training.

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KW - neural networks

KW - transfer learning

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SN - 979-8-3503-9745-1

T3 - Proceedings - International Conference on Tools with Artificial Intelligence, ICTAI

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BT - 2022 IEEE 34th International Conference on Tools with Artificial Intelligence, ICTAI 2022

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T2 - 34th IEEE International Conference on Tools with Artificial Intelligence, ICTAI 2022

Y2 - 31 October 2022 through 2 November 2022

ER -

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