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Grounded Approach for Understanding Changes in Human Emotional States in Real Time Using Psychophysiological Sensory Apparatuses

机译:使用心理生理感官装置实时了解人类情绪状态变化的基础方法

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This paper discusses the technical and philosophical challenges that researchers and practitioners face when attempting to classify human emotion based upon raw physiological data. It proposes the use of a representational learning approach that adopts techniques from industrial internet of things (IoT) solutions. It applies this approach to the classification of emotional states using functional near infrared spectroscopy (fNIRS) sensor data. The algorithm used first pre-processes the data using a combination of signal processing and vector quantization techniques. Next, it found the optimal number of natural clusters within human emotional states and used these as the target variables for either shallow or for deep learning classification. The deep learning variant used a Restricted Boltzmann Machine (RBM) to form a compressive representation of the input data prior to classification. A final single layer perception model learned the relationship between the input and output states. This approach would be useful for detecting real-time changes in human emotional state. It is able automatically create emotional states that are both highly separable and balanced. It is able to distinguish between low v. high emotional states across all tasks (F1-score of 71.4%) and is better at forming this distinction for tasks intended to elicit higher cognitive load such as the Tetris video game (F1-score of 87.1%) or the Multi Attribute Task Battery (F1-score of 77%).
机译:本文讨论了研究人员和从业者面临的技术和哲学挑战,当时基于原始生理数据对人类的情绪进行分类。它建议使用代表学习方法,该方法采用来自工业互联网(物联网)解决方案的技术。它将这种方法应用于使用功能近红外光谱(FNIR)传感器数据的功能态的情绪状态的分类。使用信号处理和矢量量化技术的组合首先使用的算法首先预处理数据。接下来,它发现人类情绪状态内的自然簇的最佳数量,并使用这些作为浅层或深度学习分类的目标变量。深度学习变型使用限制的Boltzmann机器(RBM)来在分类之前形成输入数据的压缩表示。最终单层感知模型学习输入和输出状态之间的关系。这种方法对于检测人类情绪状态的实时变化是有用的。它能够自动创建高度可分离和平衡的情绪状态。它能够区分低v。跨所有任务的高情绪状态(F1分数为71.4%),更好地形成这种区分,以便引发更高的认知负荷,例如俄罗斯省视频游戏(F1分数为87.1 %)或多属性任务电池(F1分数为77%)。

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