College of Transportation Engineering, Tongji University, 201804 Shanghai, China; The Key Laboratory of Road and Traffic Engineering, Ministry of Education, 4800 Cao'an Road, 201804 Shanghai, China.
Department of Computer Science, University of Central Florida, Orlando, FL 32816, United States.
Accid Anal Prev. 2022 Apr;168:106609. doi: 10.1016/j.aap.2022.106609. Epub 2022 Feb 24.
Current designs of advanced driving assistance systems (ADAS) mainly developed uniform collision warning algorithms, which ignore the heterogeneity of driving behaviors, thus lead to low drivers' trust in. To address this issue, developing personalized driving assistance algorithms is a promising approach. However, current personalization systems were mainly implemented through manually adjusting warning trigger thresholds, which would be less feasible for overall drivers as certain domain expertise is required to set personal thresholds accurately. Other personalization techniques exploited individual drivers' data to build personalized models. Such approach could learn personal behavior but requires impractical large-scale individual data collections. To fill up the gaps, self-adaptive algorithms for personalized forward collision warning (FCW) based on federated learning were proposed in this study. A baseline model was developed by long short-term memory (LSTM) for FCW. Federated learning framework was then introduced to collect knowledge from multiple drivers with privacy preserving. Specifically, a general cloud server model was trained by collecting updated parameters from individual vehicle server models rather than collecting raw data. Besides, a driver-specific batch normalization (BN) layer was added into each vehicle server model to address the heterogeneity of driving behaviors. Experiments show empirically that the proposed federated-based personalized models with the BN layer showed to have the best performance. The average modeling accuracy has reached 84.88% and the performance is comparable to conventional total data collection training approach, where the additional BN layer could increase the accuracy by 3.48%. Finally, applications of the proposed framework and its further investigations have been discussed.
当前先进驾驶辅助系统 (ADAS) 的设计主要开发了统一的碰撞预警算法,这些算法忽略了驾驶行为的异质性,从而导致驾驶员对 ADAS 的信任度降低。为了解决这个问题,开发个性化的驾驶辅助算法是一种很有前途的方法。然而,当前的个性化系统主要通过手动调整预警触发阈值来实现,这对于所有驾驶员来说都不太可行,因为需要一定的领域专业知识才能准确设置个性化阈值。其他个性化技术利用驾驶员的个人数据来构建个性化模型。这种方法可以学习个人行为,但需要不切实际的大规模个人数据收集。为了填补空白,本研究提出了基于联邦学习的个性化前向碰撞预警 (FCW) 的自适应算法。通过长短期记忆 (LSTM) 为 FCW 开发了一个基线模型。然后,引入联邦学习框架在保护隐私的情况下从多个驾驶员那里收集知识。具体来说,通过从各个车辆服务器模型中收集更新的参数,而不是收集原始数据,来训练一个通用的云服务器模型。此外,在每个车辆服务器模型中添加了一个驾驶员特定的批量归一化 (BN) 层,以解决驾驶行为的异质性问题。实验结果表明,所提出的具有 BN 层的基于联邦的个性化模型的性能最佳。平均建模精度达到 84.88%,与传统的总数据收集训练方法的性能相当,其中 BN 层可以将精度提高 3.48%。最后,讨论了所提出的框架的应用及其进一步的研究。