Automatic Emotion Recognition from Facial Expressions when Wearing a Mask

G. Castellano, B. D. Carolis, Nicola Macchiarulo
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引用次数: 5

Abstract

People communicate emotions through several nonverbal channels and facial expressions play an important part in this communicative process. Automatic Facial Expression Recognition (FER) is a very hot topic that has attracted a lot of interest in the last years. Most FER systems try to recognize emotions from the entire face of a person. Unfortunately, due to pandemic situation, people wear a mask most of the time, thus their faces are not fully visible. In our study, we investigate the effectiveness of a FER system in recognizing emotions only from the eyes region, which is the sole visible region when wearing a mask by comparing the results of the same approach when applied to the entire face. The proposed pipeline involves several steps: detecting a face in an image, detecting a mask on a face, extracting the eyes region, and recognize the emotion expressed on the basis of such region. As it was expected, emotions that are related mainly to the mouth region (e.g. disgust) are not recognized at all and positive emotions are the ones that are better determined by considering only the region of the eyes.
戴面具时面部表情的自动情感识别
人们通过几种非语言渠道来交流情绪,面部表情在这一交流过程中起着重要作用。自动面部表情识别(FER)是近年来引起广泛关注的一个热门话题。大多数人工神经识别系统试图从一个人的整个面部识别情绪。不幸的是,由于疫情,人们大部分时间都戴着口罩,因此他们的脸不完全可见。在我们的研究中,我们通过比较将相同方法应用于整个面部时的结果,研究了FER系统仅从眼睛区域识别情绪的有效性,眼睛区域是戴口罩时唯一可见的区域。提出的流程包括几个步骤:在图像中检测人脸,检测人脸上的面具,提取眼睛区域,并识别基于该区域表达的情感。正如预期的那样,主要与嘴部相关的情绪(如厌恶)根本无法被识别,而积极的情绪则是那些只考虑眼睛区域的情绪。
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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