基于LSTM的微信小程序情绪脑电信号识别系统

Liang Wang, Xin Deng, Xiangwei Lv, Ke Liu, Qing-Yun Yang, Can Long
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引用次数: 1

摘要

情感作为人的高级功能之一,对人的性格和心理健康有着巨大的影响。脑电图作为一种快速测量神经信号的方法,成为评价不同情绪的重要手段。一些传统的机器学习技术没有考虑到脑电信号中关键的时间动态信息。而深度学习技术中的长短时记忆(LSTM)网络在时间上具有递归结构,可以很好地解决这一问题。本文设计并训练了一种LSTM对情绪脑电进行分类,并在此基础上构建了微信小程序系统。小程序系统结合LSTM实现了脑电信号预处理、特征提取、情绪分类、用户管理等功能。它可以根据用户的脑电图向用户反馈情绪变化的愉悦程度和清醒程度,既可以作为情绪检查员,也可以作为个人使用的娱乐工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A WeChat Mini-program System with LSTM for The Emotional EEG Signal Recognition
As one of the advanced functions for human being, the emotion has a great influence on people's personality and mental health. EEG serves as a rapid measure method for neural signals that becomes an important way to evaluate different emotions. Some traditional machine learning techniques do not take into account the crucial temporal dynamic information in the EEG signals. However, with the recursive structure in time, the long and short time memory (LSTM) network in deep learning technology can solve this problem well. In this paper, a LSTM is designed and trained well to classify the emotional EEG, and then a WeChat mini-program system is constructed. The mini-program system incorporates with the LSTM to perform the EEG preprocessing, feature extraction, emotion classifying, and user management functions and so on. It can give feedback to the users about the emotional changes degree of pleasure and sobriety according to their EEG, which could serve as the emotion inspector as well as the entertainment tool for personal use.
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