真实情绪分类的进化神经网络

Yafei Sun, Zhishu Li, Changjie Tang, Wangping Zhou, Rong Jiang
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引用次数: 15

摘要

目前,基于真实手势的国际数据库很少。大多数面部表情数据库并没有自然地与测试对象的情绪状态联系起来。在这项工作中,我们通过增加更多的受试者来扩展2003年创建的真实情感数据库。同时,我们将进化算法与神经网络相结合,很好地提高了识别率。为了与调整后的神经网络进行比较,我们还实现了基因表达式编程和决策树等其他分类方法。实验结果表明,我们的进化反向传播神经网络的速度很快,平均识别率达到97%。此外,它比基因表达商业软件GeneXproTools更快、更准确,GeneXproTools在许多常见数据集的分类中通常非常强大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Evolving Neural Network for Authentic Emotion Classification
Nowadays, there are few international databases based on authentic gesture. Most of the facial expression databases are not naturally linked to the emotional state of the test subjects. In this work, we expand the authentic emotion database created in 2003 by adding more subjects. Meanwhile we combine evolutionary algorithms with neural networks and well improve the recognition rate. We also implement other classification methods like gene expression programming and decision trees in order to compare with the adjusted neural networks. The experiment results show that our way to evolve back propagation neural network is quick and it can achieve an average recognition rate of 97%. Besides, it is much faster and more accurate than the gene expression commercial software: GeneXproTools, which is usually very powerful in many common datasets’ classification.
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