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Federated Multimodal Learning for Privacy-Preserving Driver Break Recommendations in Consumer Electronics | IEEE Journals & Magazine | IEEE Xplore

Federated Multimodal Learning for Privacy-Preserving Driver Break Recommendations in Consumer Electronics


Abstract:

In recent years, driver distraction behaviors, such as eating, drinking, and making phone calls, have become more and more frequent, especially during continuous driving....Show More

Abstract:

In recent years, driver distraction behaviors, such as eating, drinking, and making phone calls, have become more and more frequent, especially during continuous driving. This results in a significant increase in traffic accidents caused by those behaviors. Therefore, it is crucial to recommend driver breaks when frequent instances of driver distraction are detected. Despite numerous single modal-based approaches, such as computer vision, were proposed for driver distraction detection, driver break recommendations still suffer from low accuracy and mandatory requirement of preinstalled cameras. To make the full use of the power of ambient information including images, audios, and postures, we introduce Multimodal Learning (ML) to identify driver distraction. Our model is capable of utilizing information from images, audios, and postures through consumer electronic devices such as mobile phones. Moreover, transfer learning is utilized to take advantage of previously trained models, thereby significantly enhancing the accuracy. However, training an personalized model requires a substantial amount of data from entities and individuals which raises privacy concerns. Henceforth, we integrate Federated Learning into Multimodal Deep Learning framework to protect participants’ privacy while achieving better performance in recommending driver breaks. The experimental findings conclusively demonstrate that the proposed method not only outperforms other existing approaches in terms of providing effective driver break recommendations but also prioritizes the privacy of the individuals involved.
Published in: IEEE Transactions on Consumer Electronics ( Volume: 70, Issue: 1, February 2024)
Page(s): 4564 - 4573
Date of Publication: 05 December 2023

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I. Introduction

Driver distraction behaviors such as drinking water, making phone calls, and sending text messages occupy the driver’s attention and may lead to the loss of vehicle control and decision-making ability. According to a report from police, about 25% of accidents can blame on driver distraction. McEvoy et al. [1] conducted a questionnaire survey on 1367 drivers who stayed in hospitals because of car accidents and collected additional data from the ambulance and medical records. The result shows that more than 30% of the drivers mentioned at least one kind of distraction behavior when a car accident happened. The research of Duan et al. [2] also shows that driver distraction reduces the efficiency of driving significantly. Therefore, it becomes an important matter to monitor drivers’ behaviors during driving. However, it doesn’t mean that if a distracting behavior appears then an accident happens. It varies from person to person. Reports also show that these behaviors become more frequent after longer driving, and having a short recess can significantly reduce distraction behaviors. Therefore, this paper tries to design a driver break recommendation based on distraction behavior detection. It requires to detect distraction behaviors accurately not only in the spatial domain but also in the temporal domain. To reduce false alarms, only when distraction behaviors appear more than a dynamic threshold will the recommendation be notified to the driver. The challenge lies in accurately providing personalized break recommendations while safeguarding individual privacy.

Cites in Papers - |

Cites in Papers - IEEE (6)

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1.
Seyed Mohammad Sheikholeslami, Pai Chet Ng, Jamshid Abouei, Konstantinos N. Plataniotis, "Multi-Modal Federated Learning Over Cell-Free Massive MIMO Systems for Activity Recognition", IEEE Access, vol.13, pp.40844-40858, 2025.
2.
Harun Jamil, Yang Jian, Faisal Jamil, Shabir Ahmad, "Swarm Learning Empowered Federated Deep Learning for Seamless Smartphone-Based Activity Recognition", IEEE Transactions on Consumer Electronics, vol.70, no.4, pp.6919-6935, 2024.
3.
Can Xie, Xiaobing Zhai, Haiyang Chi, Wenxiang Li, Xiaolin Li, Yuyang Sha, Kefeng Li, "A Novel Fusion Pruning-Processed Lightweight CNN for Local Object Recognition on Resource-Constrained Devices", IEEE Transactions on Consumer Electronics, vol.70, no.4, pp.6713-6724, 2024.
4.
Haonan Zhang, Ke Li, Kangli Zhao, Peng Xu, Bin Dai, "An Efficient Joint Source-Channel Coding Scheme for Wireless Hierarchical Federated Learning and its Information-Theoretic Analysis", IEEE Transactions on Consumer Electronics, vol.70, no.4, pp.7398-7411, 2024.
5.
Yi Li, Jian Shen, Pandi Vijayakumar, Chin-Feng Lai, Audithan Sivaraman, Pradip Kumar Sharma, "Next-Generation Consumer Electronics Data Auditing Scheme Toward Cloud–Edge Distributed and Resilient Machine Learning", IEEE Transactions on Consumer Electronics, vol.70, no.1, pp.2244-2256, 2024.
6.
Shuo Xu, Hui Xia, Lijuan Xu, Rui Zhang, Chunqiang Hu, "MIGAN: A Privacy Leakage Evaluation Scheme for CIoT-Based Federated Learning Users", IEEE Transactions on Consumer Electronics, vol.70, no.1, pp.3098-3110, 2024.

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