论文标题
对虚拟环境的情感识别:基准数据集上的脑电图功能的评估
Towards emotion recognition for virtual environments: an evaluation of EEG features on benchmark dataset
论文作者
论文摘要
虚拟环境中的挑战之一是用户与这些日益复杂的系统进行交互困难。最终,赋予感知用户情绪的能力的机器将使更直观,更可靠的互动。因此,将脑电图用作生物信号传感器,可以对用户的情感状态进行建模和随后使用,以实现可以识别并对用户情绪做出反应的系统。本文研究了从脑电图信号中提取的特征,目的是基于Russell的Circumplex模型的情感状态建模。提出了调查,旨在为未来的工作奠定基础,以建模用户影响,以增强虚拟环境中的相互作用体验。 DEAP数据集在这项工作中使用,以及支持向量机和随机森林,该森林使用基于统计测量值和来自\ \ b {eta},c {eta},l和d的频带功率的特征向量产生了合理的分类精度,并使用特征向量进行了唤醒和唤醒。
One of the challenges in virtual environments is the difficulty users have in interacting with these increasingly complex systems. Ultimately, endowing machines with the ability to perceive users emotions will enable a more intuitive and reliable interaction. Consequently, using the electroencephalogram as a bio-signal sensor, the affective state of a user can be modelled and subsequently utilised in order to achieve a system that can recognise and react to the user's emotions. This paper investigates features extracted from electroencephalogram signals for the purpose of affective state modelling based on Russell's Circumplex Model. Investigations are presented that aim to provide the foundation for future work in modelling user affect to enhance interaction experience in virtual environments. The DEAP dataset was used within this work, along with a Support Vector Machine and Random Forest, which yielded reasonable classification accuracies for Valence and Arousal using feature vectors based on statistical measurements and band power from the ź, \b{eta}, ź, and źź waves and High Order Crossing of the EEG signal.