Emotion Recognition Approach Using Multilayer Perceptron Network and Motion Estimation

M. Berkane, Kenza Belhouchette, H. Belhadef
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引用次数: 6

Abstract

Man-machine interaction is an interdisciplinary field of research that provides natural and multimodal ways of interaction between humans and computers. For this purpose, the computer must understand the emotional state of the person with whom it interacts. This article proposes a novel method for detecting and classify the basic emotions like sadness, joy, anger, fear, disgust, surprise, and interest that was introduced in previous works. As with all emotion recognition systems, the approach follows the basic steps, such as: facial detection and facial feature extraction. In these steps, the contribution is expressed by using strategic face points and interprets motions as action units extracted by the FACS system. The second contribution is at the level of the classification step, where two classifiers were used: Kohonen self-organizing maps (KSOM) and multilayer perceptron (MLP) in order to obtain the best results. The obtained results show that the recognition rate of basic emotions has improved, and the running time was minimized by reducing resource use.
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基于多层感知器网络和运动估计的情绪识别方法
人机交互是一个跨学科的研究领域,它提供了人与计算机之间自然和多模态的交互方式。为此,计算机必须了解与之交互的人的情绪状态。本文提出了一种新的方法来检测和分类基本的情绪,如悲伤、喜悦、愤怒、恐惧、厌恶、惊讶和兴趣,这是以前的作品中介绍的。与所有的情绪识别系统一样,该方法遵循基本步骤,例如:面部检测和面部特征提取。在这些步骤中,贡献是通过使用战略面点来表示的,并将动作解释为FACS系统提取的动作单元。第二个贡献是在分类步骤的层面,其中使用了两个分类器:Kohonen自组织映射(KSOM)和多层感知器(MLP),以获得最佳结果。结果表明,该方法提高了基本情绪的识别率,减少了资源的使用,使运行时间最小化。
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