EEG Dimensional Reduction with Stack AutoEncoder for Emotional Recognition using LSTM/RNN

I. Aliyu, C. Lim
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引用次数: 2

Abstract

Due to the important role played by emotion in human interaction, affective computing is dedicated in trying to understand and regulate emotion through human-aware artificial intelligence. By understanding, emotion mental diseases such as depression, autism, attention deficit hyperactivity disorder, and game addiction will be better managed as they are all associated with emotion. Various studies for emotion recognition have been conducted to solve these problems. In applying machine learning for the emotion recognition, the efforts to reduce the complexity of the algorithm and improve the accuracy are required. In this paper, we investigate emotion Electroencephalogram (EEG) feature reduction and classification using Stack AutoEncoder (SAE) and Long-Short-Term-Memory/Recurrent Neural Networks (LSTM/RNN) classification respectively. The proposed method reduced the complexity of the model and significantly enhance the performance of the classifiers.
基于堆栈自编码器的脑电降维LSTM/RNN情绪识别
由于情感在人类互动中的重要作用,情感计算致力于通过人类感知的人工智能来理解和调节情感。通过理解,情绪精神疾病,如抑郁症、自闭症、注意缺陷多动障碍和游戏成瘾将得到更好的管理,因为它们都与情绪有关。为了解决这些问题,人们进行了各种各样的情绪识别研究。将机器学习应用于情感识别,需要努力降低算法的复杂性,提高算法的准确性。本文分别采用堆栈自动编码器(SAE)和长短期记忆/循环神经网络(LSTM/RNN)分类技术研究了情绪脑电图(EEG)特征的约简和分类。该方法降低了模型的复杂度,显著提高了分类器的性能。
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