用于驾驶员意图预测的个性化神经网络:通信是自动驾驶的推动者

IF 2.3 Q2 OPTICS Advanced Optical Technologies Pub Date : 2020-10-28 DOI:10.1515/aot-2020-0035
Johannes Reschke, C. Neumann, S. Berlitz
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引用次数: 1

摘要

摘要在日常交通中,行人依赖于与其他道路使用者的非正式交流。在自动化车辆的情况下,这种通信可以用光信号代替,这需要事先学习。在广泛引入自动化车辆之前,可以在驾驶员意图预测的帮助下,在手动驾驶中设置这些光信号的学习阶段。因此,实现了由神经网络、随机森林和条件阶段组成的三阶段算法。使用该算法,可以实现94.0%的真阳性率(TPR)和5.0%的假阳性率(FPR)。为了改进这一过程,使用驾驶员的特定行为实施了个性化程序,导致TPR在91.5%至96.6%之间,FPR为5.0%。神经网络的迁移学习提高了几乎所有驾驶员的预测准确性。为了在当今的交通中引入所实现的算法,特别是FPR必须得到显著的改进。
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Personalised neural networks for a driver intention prediction: communication as enabler for automated driving
Abstract In everyday traffic, pedestrians rely on informal communication with other road users. In case of automated vehicles, this communication can be replaced by light signals, which need to be learned beforehand. Prior to an extensive introduction of automated vehicles, a learning phase for these light signals can be set up in manual driving with help of a driver intention prediction. Therefore, a three-staged algorithm consisting of a neural network, a random forest and a conditional stage, is implemented. Using this algorithm, a true-positive rate (TPR) of 94.0% for a 5.0% false-positive rate (FPR) can be achieved. To improve this process, a personalization procedure is implemented, using driver-specific behaviours, resulting in TPRs ranging from 91.5 to 96.6% for a FPR of 5.0%. Transfer learning of neural networks improves the prediction accuracy of almost all drivers. In order to introduce the implemented algorithm in today’s traffic, especially the FPR has to be improved considerably.
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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
23
期刊介绍: Advanced Optical Technologies is a strictly peer-reviewed scientific journal. The major aim of Advanced Optical Technologies is to publish recent progress in the fields of optical design, optical engineering, and optical manufacturing. Advanced Optical Technologies has a main focus on applied research and addresses scientists as well as experts in industrial research and development. Advanced Optical Technologies partners with the European Optical Society (EOS). All its 4.500+ members have free online access to the journal through their EOS member account. Topics: Optical design, Lithography, Opto-mechanical engineering, Illumination and lighting technology, Precision fabrication, Image sensor devices, Optical materials (polymer based, inorganic, crystalline/amorphous), Optical instruments in life science (biology, medicine, laboratories), Optical metrology, Optics in aerospace/defense, Simulation, interdisciplinary, Optics for astronomy, Standards, Consumer optics, Optical coatings.
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