基于深度学习混合模式的情绪识别研究

Boyan Mi, Jiangdong Lu, Fen Zheng
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引用次数: 0

摘要

随着近年来人工智能和机器学习的快速发展,情绪识别逐渐成为一个重要的研究课题。情感识别在一个方向上经过长期的发展有了很好的研究基础,从多个方向上可以提取出更有效的信息,从而提高情感识别的准确性。本文从情绪识别的角度对生理信号如脑波信号和面部情绪识别进行分析,分别对采集到的信号进行预处理、特征提取、SVM特征分类、LSTM结合卷积神经网络进行情绪识别。并比较了混合模态情感识别的准确率。与单一面部表情情感识别相比,混合模态情感识别提取的特征信息更多,准确率更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Emotion Recognition Based on Deep Learning Mixed Modalities
With the rapid development of artificial intelligence and machine learning in recent years, emotion recognition has gradually become an important research topic. Emotion recognition in one direction has a good research foundation after long-term development, and from multiple directions, more effective information can be extracted, thereby improving the accuracy of emotion recognition. This paper analyzes from the perspective of emotional recognition of physiological signals such as brainwave signals and facial emotion recognition, respectively, preprocessing, feature extraction, SVM feature classification, LSTM combined with convolutional neural network emotion recognition for the acquired signals. And the accuracy of mixed-modal emotion recognition is compared. Compared with single facial expression emotion recognition, mixed-modal emotion recognition extracts more feature information and has a higher accuracy.
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