Real-time EEG-based Emotion Recognition (EEG-ER) with consumer-grade EEG devices involves classification of emotions using a reduced number of channels. These devices typically provide only four or five channels, unlike the high number of channels (32 or more) typically used in most current state-of-the-art research. In this work we propose to use Discrete Wavelet Transforms (DWT) to extract time-frequency domain features, and we use time-windows of a few seconds to perform EEG-ER classification. This technique can be used in real-time, as opposed to post-hoc on the full session data. We also apply baseline removal preprocessing, developed in prior research, to our proposed DWT Entropy and Energy features, which improves classification accuracy significantly. We consider two different classifier architectures, a 3D Convolutional Neural Network (3D CNN) and a Support Vector Machine (SVM). We evaluate both models on subject-independent and subject dependent setups to classify the Valence and Arousal dimensions of an individual's emotional state. We test them on both the full 32-channel data provided by the DEAP dataset, and also a reduced 5-channel extract of the same dataset. The SVM model performs best on all the presented scenarios, achieving an accuracy of 95.32% on Valence and 95.68% on Arousal for the full 32-channel subject-dependent case, beating prior real-time EEG-ER subject-dependent benchmarks. On the subject-independent case an accuracy of 80.70% on Valence and 81.41% on Arousal was also obtained. Reducing the input data to 5 channels only degrades the accuracy by an average of 3.54% across all scenarios, making this model appropriate for use with more accessible low-end EEG devices.
翻译:以消费级 EEG- ER (EEEG-ER) 为基础的实时 EEG 情感识别(EEEG-ER), 有消费级 EEG 设备, 有消费级 EEG 设备的 EEG 情感识别(EEG-ER) 设备, 涉及到使用数量较少的频道对情绪进行分类。 这些设备通常只提供四、五个频道, 不同于目前大多数最先进的研究通常使用的大量频道( 32 或更多 ) 。 在这项工作中, 我们提议使用分解式的波纹波音变换(DWT) 来提取时频域域特性, 我们使用几秒钟的时视窗模式来进行 EEEG-ER 直径分类。 这种技术可以实时使用, 而不是在全会场数据的后热度数据中, 我们用前研究开发的基线删除预处理, 用于我们提议的DWT ET Etropy and Energy 功能特性。 我们考虑两种不同的分类结构结构, 3D- EVEG 数据在全部的轨数据中, 5 数据中, 运行中也用相同的数据显示一个正常的直径直径数据, 直径直径直径直径直径直径数据输入数据, 。