论文标题

通过潜在变量状态空间框架在野外建模

Driver State Modeling through Latent Variable State Space Framework in the Wild

论文作者

Tavakoli, Arash, Boker, Steven, Heydarian, Arsalan

论文摘要

分析环境对驾驶员压力水平和工作量的影响对于设计以人为本的驾驶员 - 车辆交互系统而言至关重要,并最终有助于建立更安全的驾驶体验。但是,驾驶员的状态,包括压力水平和工作量,是无法自行衡量的心理结构,应通过传感器测量(例如心理生理措施)来估算。我们建议使用潜在的状态空间建模框架进行驱动程序状态分析。通过使用潜在变量的状态空间模型,我们将驱动因素的工作量和压力水平作为潜在变量,作为通过多模式人类感应数据估算的潜在变量,在环境的扰动下,以状态空间格式和整体方式进行。通过使用从11位参与者收集的多模式驾驶数据的案例研究,我们首先估计驱动因素的潜在应力水平和驾驶员的工作量,从心率,凝视措施和面部动作单位的强度。然后,我们表明外部上下文元素,例如车辆数量作为交通密度的代理和次要任务要求可能与驾驶员的压力水平和工作负载的变化有关。我们还表明,上述扰动可能会对不同的驱动因素的影响有所不同。我们发现,以前的时间段上,驾驶员的潜在状态与当前状态高度相关。此外,我们讨论了国家空间模型在分析应力水平和工作量之间可能滞后的效用,这可能表明了野外驾驶员心理生理学不同部分之间的信息传播。

Analyzing the impact of the environment on drivers' stress level and workload is of high importance for designing human-centered driver-vehicle interaction systems and to ultimately help build a safer driving experience. However, driver's state, including stress level and workload, are psychological constructs that cannot be measured on their own and should be estimated through sensor measurements such as psychophysiological measures. We propose using a latent-variable state-space modeling framework for driver state analysis. By using latent-variable state-space models, we model drivers' workload and stress levels as latent variables estimated through multimodal human sensing data, under the perturbations of the environment in a state-space format and in a holistic manner. Through using a case study of multimodal driving data collected from 11 participants, we first estimate the latent stress level and workload of drivers from their heart rate, gaze measures, and intensity of facial action units. We then show that external contextual elements such as the number of vehicles as a proxy for traffic density and secondary task demands may be associated with changes in driver's stress levels and workload. We also show that different drivers may be impacted differently by the aforementioned perturbations. We found out that drivers' latent states at previous timesteps are highly associated with their current states. Additionally, we discuss the utility of state-space models in analyzing the possible lag between the two constructs of stress level and workload, which might be indicative of information transmission between the different parts of the driver's psychophysiology in the wild.

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