MODEL FOR PERSON PSYCHOEMOTIONAL STATE DETERMINATION USING AUDIO AND VIDEO DATA

O.D. Demin, A. Laptev
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Abstract

Determination of the person’s psychoemotional state finds application in a variety of tasks from the diagnosis of diseases to the prevention of emergency traffic situations. Given the importance and variety of tasks where it used, there are many methods and approaches of it exists, but most of them use only one nonverbal feature, such as a person's voice or facial expressions. At the same time, the simultaneous use of several nonverbal signs can increase accuracy compared to methods using only one nonverbal sign. In this paper, such method has been developed that uses voice and facial expression as nonverbal signs. Based on the literature review and analysis of existing methods, the best methods and approaches using voice or facial expression were selected, the developed method was compared with existing solutions. The developed method made it possible to improve the accuracy of CMCNN, but at the same time, in each test, the Accuracy of its own method was less in comparison with DisVoice + SVM. For improving developed method weighted average was proposed to use instead of usual average or using more complex model, which is able to detect interrelation between person’s voice and facial expression.
利用音频和视频数据确定人的心理情绪状态的模型
人的心理情绪状态的测定在各种任务中都有应用,从疾病的诊断到紧急交通状况的预防。鉴于它所使用的任务的重要性和多样性,有许多方法和途径存在,但大多数都只使用一个非语言特征,如一个人的声音或面部表情。同时,与只使用一个非语言符号的方法相比,同时使用几个非语言符号可以提高准确性。本文提出了一种利用声音和面部表情作为非语言符号的方法。在对现有方法进行文献回顾和分析的基础上,选择语音或面部表情的最佳方法和途径,并将所开发的方法与现有解决方案进行比较。所开发的方法使CMCNN的准确率得以提高,但同时,在每次测试中,自身方法的准确率都低于DisVoice + SVM。为了改进现有的方法,提出用加权平均来代替通常的平均或使用更复杂的模型来检测人的声音和面部表情之间的相互关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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