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Multimodality Inferring of Human Cognitive States Based on Integration of Neuro-Fuzzy Network and Information Fusion Techniques

机译:基于神经模糊网络和信息融合技术的人类认知状态多模态推断

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To achieve an effective and safe operation on the machine system where the human interacts with the machine mutually, there is a need for the machine to understand the human state, especially cognitive state, when the human's operation task demands an intensive cognitive activity. Due to a well-known fact with the human being, a highly uncertain cognitive state and behavior as well as expressions or cues, the recent trend to infer the human state is to consider multimodality features of the human operator. In this paper, we present a method for multimodality inferring of human cognitive states by integrating neuro-fuzzy network and information fusion techniques. To demonstrate the effectiveness of this method, we take the driver fatigue detection as an example. The proposed method has, in particular, the following new features. First, human expressions are classified into four categories: (i) casual or contextual feature, (ii) contact feature, (iii) contactless feature, and (iv) performance feature. Second, the fuzzy neural network technique, in particular Takagi-Sugeno-Kang (TSK) model, is employed to cope with uncertain behaviors. Third, the sensor fusion technique, in particular ordered weighted aggregation (OWA), is integrated with the TSK model in such a way that cues are taken as inputs to the TSK model, and then the outputs of the TSK are fused by the OWA which gives outputs corresponding to particular cognitive states under interest (e.g., fatigue). We call this method TSK-OWA. Validation of the TSK-OWA, performed in the Northeastern University vehicle drive simulator, has shown that the proposed method is promising to be a general tool for human cognitive state inferring and a special tool for the driver fatigue detection.
机译:为了在人与机器相互交互的机器系统上实现有效和安全的操作,当人的操作任务需要密集的认知活动时,需要机器理解人的状态,尤其是认知状态。由于人类众所周知的事实,高度不确定的认知状态和行为以及表情或提示,推断人类状态的最新趋势是考虑人类操作员的多模态特征。在本文中,我们提出了一种通过整合神经模糊网络和信息融合技术来推断人类认知状态的多模态方法。为了证明这种方法的有效性,我们以驾驶员疲劳检测为例。所提出的方法尤其具有以下新特征。首先,人类表情被分为四类:(i)随意或上下文特征,(ii)接触特征,(iii)非接触特征和(iv)表演特征。其次,采用模糊神经网络技术,特别是高木-Sugeno-Kang(TSK)模型来应对不确定的行为。第三,将传感器融合技术(特别是有序加权聚合(OWA))与TSK模型集成在一起,以将线索作为TSK模型的输入,然后将OSK对TSK的输出进行融合,给出与感兴趣的特定认知状态(例如疲劳)相对应的输出。我们称此方法为TSK-OWA。在东北大学的车辆驾驶模拟器中对TSK-OWA进行的验证表明,该方法有望成为人类认知状态推断的通用工具和驾驶员疲劳检测的特殊工具。

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