Dolmans Tenzing C, Poel Mannes, van 't Klooster Jan-Willem J R, Veldkamp Bernard P
Data Management and Biometrics, University of Twente, Enschede, Netherlands.
Behavioural, Management and Social Sciences Lab, University of Twente, Enschede, Netherlands.
Front Hum Neurosci. 2021 Jan 11;14:609096. doi: 10.3389/fnhum.2020.609096. eCollection 2020.
A lot of research has been done on the detection of mental workload (MWL) using various bio-signals. Recently, deep learning has allowed for novel methods and results. A plethora of measurement modalities have proven to be valuable in this task, yet studies currently often only use a single modality to classify MWL. The goal of this research was to classify perceived mental workload (PMWL) using a deep neural network (DNN) that flexibly makes use of multiple modalities, in order to allow for feature sharing between modalities. To achieve this goal, an experiment was conducted in which MWL was simulated with the help of verbal logic puzzles. The puzzles came in five levels of difficulty and were presented in a random order. Participants had 1 h to solve as many puzzles as they could. Between puzzles, they gave a difficulty rating between 1 and 7, seven being the highest difficulty. Galvanic skin response, photoplethysmograms, functional near-infrared spectrograms and eye movements were collected simultaneously using LabStreamingLayer (LSL). Marker information from the puzzles was also streamed on LSL. We designed and evaluated a novel intermediate fusion multimodal DNN for the classification of PMWL using the aforementioned four modalities. Two main criteria that guided the design and implementation of our DNN are modularity and generalisability. We were able to classify PMWL within-level accurate (0.985 levels) on a seven-level workload scale using the aforementioned modalities. The model architecture allows for easy addition and removal of modalities without major structural implications because of the modular nature of the design. Furthermore, we showed that our neural network performed better when using multiple modalities, as opposed to a single modality. The dataset and code used in this paper are openly available.
已经开展了大量关于使用各种生物信号检测心理负荷(MWL)的研究。最近,深度学习带来了新颖的方法和成果。众多测量方式已被证明在这项任务中具有价值,但目前的研究通常仅使用单一方式对心理负荷进行分类。本研究的目标是使用深度神经网络(DNN)对感知心理负荷(PMWL)进行分类,该网络能灵活利用多种方式,以便在不同方式之间实现特征共享。为实现这一目标,进行了一项实验,借助语言逻辑谜题模拟心理负荷。谜题有五个难度级别,并以随机顺序呈现。参与者有1小时时间尽可能多地解决谜题。在谜题之间,他们给出1至7的难度评级,7表示最高难度。使用实验室流层(LSL)同时收集皮肤电反应、光电容积脉搏波图、功能性近红外光谱图和眼动数据。谜题的标记信息也通过LSL进行传输。我们设计并评估了一种新颖的中间融合多模态DNN,用于使用上述四种方式对PMWL进行分类。指导我们DNN设计与实现的两个主要标准是模块化和通用性。使用上述方式,我们能够在七级工作负荷量表上实现PMWL级内准确分类(0.985级)。由于设计的模块化性质,该模型架构允许轻松添加和删除方式,而无需对结构产生重大影响。此外,我们表明,与单一方式相比,我们的神经网络在使用多种方式时表现更好。本文使用的数据集和代码可公开获取。