Kim Il-Hwa, Kim Jeong-Woo, Haufe Stefan, Lee Seong-Whan
Department of Brain and Cognitive Engineering, Korea University, Anam-dong, Seongbuk-ku, Seoul 136-713, Korea.
J Neural Eng. 2015 Feb;12(1):016001. doi: 10.1088/1741-2560/12/1/016001. Epub 2014 Nov 26.
We developed a simulated driving environment for studying neural correlates of emergency braking in diversified driving situations. We further investigated to what extent these neural correlates can be used to detect a participant's braking intention prior to the behavioral response.
We measured electroencephalographic (EEG) and electromyographic signals during simulated driving. Fifteen participants drove a virtual vehicle and were exposed to several kinds of traffic situations in a simulator system, while EEG signals were measured. After that, we extracted characteristic features to categorize whether the driver intended to brake or not.
Our system shows excellent detection performance in a broad range of possible emergency situations. In particular, we were able to distinguish three different kinds of emergency situations (sudden stop of a preceding vehicle, sudden cutting-in of a vehicle from the side and unexpected appearance of a pedestrian) from non-emergency (soft) braking situations, as well as from situations in which no braking was required, but the sensory stimulation was similar to stimulations inducing an emergency situation (e.g., the sudden stop of a vehicle on a neighboring lane).
We proposed a novel feature combination comprising movement-related potentials such as the readiness potential, event-related desynchronization features besides the event-related potentials (ERP) features used in a previous study. The performance of predicting braking intention based on our proposed feature combination was superior compared to using only ERP features. Our study suggests that emergency situations are characterized by specific neural patterns of sensory perception and processing, as well as motor preparation and execution, which can be utilized by neurotechnology based braking assistance systems.
我们开发了一种模拟驾驶环境,用于研究在多样化驾驶场景下紧急制动的神经关联。我们进一步研究了这些神经关联在多大程度上可用于在行为反应之前检测参与者的制动意图。
我们在模拟驾驶过程中测量脑电图(EEG)和肌电图信号。15名参与者驾驶一辆虚拟车辆,并在模拟器系统中面临几种交通情况,同时测量EEG信号。之后,我们提取特征以对驾驶员是否打算制动进行分类。
我们的系统在广泛的可能紧急情况下显示出出色的检测性能。特别是,我们能够将三种不同的紧急情况(前车突然停车、车辆从侧面突然切入以及行人意外出现)与非紧急(软)制动情况以及不需要制动但感觉刺激与引发紧急情况的刺激相似的情况(例如,相邻车道上的车辆突然停车)区分开来。
我们提出了一种新颖的特征组合,除了先前研究中使用的事件相关电位(ERP)特征外,还包括与运动相关的电位,如准备电位、事件相关去同步化特征。基于我们提出的特征组合预测制动意图的性能优于仅使用ERP特征。我们的研究表明,紧急情况的特征是特定的感觉感知和处理神经模式,以及运动准备和执行,基于神经技术的制动辅助系统可以利用这些特征。