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Understanding Cue Utility in Controlled Evasive Driving Manoeuvres: Optimizing Vestibular Cues for Simulator Human Abilities

机译:了解控制避险驾驶机动中的提示效用:优化用于模拟器和人类能力的前庭线索

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Most daily driving tasks are of low bandwidth and therefore the relatively slow visual system provides enough cue information to perform the task in a manner that is statistically indistinguishable from reality. On the other hand, evasive maneuvers are of such a high bandwidth that waiting for the visual cues to change is too slow and skilled drivers use steering torques and vestibular motion cues to know how the car is responding in order to make rapid corrective actions. In this study we show for evasive maneuvers on snow and ice, for which we have real world data from skilled test drivers, that the choice of motion cuing algorithm (MCA) settings has a tremendous impact on the saliency of motion cues and their similarity with reality. We demonstrate this by introducing a novel optimization scheme to optimize the classic MCA in the context of an MCA-Simulator-Driver triplet of constraints. We incorporate the following four elements to tune the MCA for a particular maneuver: 1) acceleration profiles of the maneuver observed in reality, 2) vestibular motion perception model, 3) motion envelope constraints of the simulator, and 4) a set of heuristics extracted from the literature about human motion perception (i.e. coherence zones). Including these elements in the tuning process, notwithstanding the easiness of the tuning process, respects motion platform constraints and considers human perception. Moreover the inevitable phase and gain errors arising as a major consequence of MCA are always kept within the human coherence zones, and subsequently are not perceptible as false cues. It is expected that this approach to MCA tuning will increase the transfer of training from simulator to reality for evasive driving maneuvers where students need training most and are most dangerous to perform in reality.
机译:大多数日常驾驶任务具有低带宽,因此相对慢的视觉系统提供足够的提示信息以以统计上与现实无法区分的方式执行任务。另一方面,避免的动作是如此高的带宽,等待视觉提示变化太慢,熟练的司机使用转向扭矩和前庭运动提示知道汽车是如何响应的,以便快速纠正措施。在这项研究中,我们展示了雪和冰上的避难所作,我们有来自熟练的测试驱动程序的真实世界数据,即运动Cuing算法(MCA)设置对运动提示的显着性以及与其相似度的选择产生了巨大影响现实。我们通过引入一种新颖的优化方案来证明这一点,以在MCA-Simulator-Driver三元组的上下文中优化Classic MCA。我们将以下四个元素纳入一个特定机动的MCA,即现实中观察到的机动的加速概况,2)前庭运动感知模型,3)模拟器的运动包络限制,4)提取了一组启发式机从关于人类运动感知的文献(即相干区)。在调谐过程中包括这些元素,尽管调谐过程的容易性,但尊重运动平台约束并考虑人类的感知。此外,作为MCA的主要结果产生的不可避免的相位和增益误差始终保持在人的一致性区域内,随后不会认为是假的提示。预计,这种方法可以增加模拟器训练转移到现实,以便驾驶机动的现实,学生需要大多数培训,并且最危险地表现。

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