论文标题

DeepTake:使用多模式数据预测驾驶员接管行为

DeepTake: Prediction of Driver Takeover Behavior using Multimodal Data

论文作者

Pakdamanian, Erfan, Sheng, Shili, Baee, Sonia, Heo, Seongkook, Kraus, Sarit, Feng, Lu

论文摘要

自动化的车辆承诺未来,驾驶员可以长时间进行非驾驶任务而无需驾驶方向盘。然而,由于技术限制和法律要求,自动车辆可能仍需要偶尔将控制权交给驾驶员。尽管某些系统确定了使用驾驶员上下文和道路状况启动接管请求的驾驶员接管的需求,但研究表明,驾驶员可能对此没有反应。我们提出了DeepTake,这是一个新型的基于神经网络的新型框架,可预测接管行为的多个方面,以确保驾驶员在执行非驾驶任务时能够安全接管控制。 DeepTake使用车辆数据,驾驶员生物识别技术和主观测量的功能,可以预测驾驶员的意图,时间和收购质量。我们使用多个评估指标评估DeepTake性能。结果表明,DeepTake可靠地预测收购意图,时间和质量,精度分别为96%,93%和83%。结果还表明,DeepTake在预测驾驶员接管时间和质量方面的先前最新方法优于先前的最新方法。我们的发现对驱动程序监测和状态检测的算法开发具有影响。

Automated vehicles promise a future where drivers can engage in non-driving tasks without hands on the steering wheels for a prolonged period. Nevertheless, automated vehicles may still need to occasionally hand the control back to drivers due to technology limitations and legal requirements. While some systems determine the need for driver takeover using driver context and road condition to initiate a takeover request, studies show that the driver may not react to it. We present DeepTake, a novel deep neural network-based framework that predicts multiple aspects of takeover behavior to ensure that the driver is able to safely take over the control when engaged in non-driving tasks. Using features from vehicle data, driver biometrics, and subjective measurements, DeepTake predicts the driver's intention, time, and quality of takeover. We evaluate DeepTake performance using multiple evaluation metrics. Results show that DeepTake reliably predicts the takeover intention, time, and quality, with an accuracy of 96%, 93%, and 83%, respectively. Results also indicate that DeepTake outperforms previous state-of-the-art methods on predicting driver takeover time and quality. Our findings have implications for the algorithm development of driver monitoring and state detection.

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