基于双向长短期记忆和机器学习技术的面部表情情绪识别

S. B. Dhekale, D. K. Shedge
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引用次数: 0

摘要

一个人可以使用的最有效的非语言交流形式是他们的面部表情。通过观察一个人脸上的表情,可以了解他的感受。这也可以揭示出这个人的不适程度、注意力、个性、社会互动和生理指标。面部表情可能相当复杂,而且根据被观察的个体而变化,这一事实给自动面部表情分析带来了许多挑战。在已经提出的工作中,已经解决的一些挑战包括面部特征的提取,将这些特征映射到高度区分的空间,情绪的合成,多个面部特征描述符的处理,以及动作单元强度的检测。这样做的目的是在进行面部表情研究时利用面部成分而不是整体面部特征。特征提取方法需要从正常状态中提取人脸特征变形。这些面部特征的变形可以由各种各样的心理状态产生。情绪品质的分类需要以双向方式(bi-LSTM)同时利用长期记忆和短期记忆。在工作中详细介绍的方法已经应用于一个标准数据库,用于情绪识别,疼痛强度估计和面部动作单位强度检测,以便证明这些方法的鲁棒性。实验结果表明,所规划的研究工作是高效可靠的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of Emotions Based on Facial Expressions Using Bidirectional Long-Short-Term Memory and Machine Learning Techniques
The most effective form of non-verbal communication that a person can use is found in their facial expressions. It is possible to gain insight into a person’s feelings by seeing the expressions on their face. This can also reveal information about the person’s level of discomfort, attentiveness, personality, social interaction, and physiological indications. The fact that facial expressions can be rather complicated and extremely varied depending on the individual being viewed presents a number of challenges for automatic facial expression analysis. In the work that has been proposed, some of the challenges that have been tackled include the extraction of facial features, the mapping of those features to highly discriminative spaces, the synthesis of emotions, the handling of multiple facial feature descriptors, and the detection of the intensity of Action Units. This is done with the intention of utilizing face components as opposed to holistic facial characteristics when conducting facial expression research. The approaches used to extract features need the extraction of face feature deformations from their normal states. These face feature deformations can be generated by a wide variety of mental states. The categorization of emotional qualities requires the utilization of both long-term and short-term memory in a bidirectional fashion (bi-LSTM). The approaches that are detailed in the work that is being presented have been applied to a standard database for the purpose of emotion recognition, pain intensity estimation, and facial action unit intensity detection so that the robustness of these methods may be demonstrated. The findings of the experiments show that the research work that was planned will be efficient as well as reliable.
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