Sainz-de-Baranda Andujar Clara, Gutiérrez-Martín Laura, Miranda-Calero José Ángel, Blanco-Ruiz Marian, López-Ongil Celia
Department of Communication and Media Studies, Universidad Carlos III de Madrid, Getafe, Madrid, Spain.
Institute on Gender Studies, Universidad Carlos III de Madrid, Getafe, Madrid, Spain.
Front Psychol. 2022 Oct 20;13:955530. doi: 10.3389/fpsyg.2022.955530. eCollection 2022.
Audiovisual communication is greatly contributing to the emerging research field of affective computing. The use of audiovisual stimuli within immersive virtual reality environments is providing very intense emotional reactions, which provoke spontaneous physical and physiological changes that can be assimilated into real responses. In order to ensure high-quality recognition, the artificial intelligence (AI) system must be trained with adequate data sets, including not only those gathered by smart sensors but also the tags related to the elicited emotion. Currently, there are very few techniques available for the labeling of emotions. Among them, the Self-Assessment Manikin (SAM) devised by Lang is one of the most popular. This study shows experimentally that the graphic proposal for the original SAM labelling system, as devised by Lang, is not neutral to gender and contains gender biases in its design and representation. Therefore, a new graphic design has been proposed and tested according to the guidelines of expert judges. The results of the experiment show an overall improvement in the labeling of emotions in the pleasure-arousal-dominance (PAD) affective space, particularly, for women. This research proves the relevance of applying the gender perspective in the validation of tools used throughout the years.
视听通信对情感计算这一新兴研究领域贡献巨大。在沉浸式虚拟现实环境中使用视听刺激会引发非常强烈的情感反应,进而引发能被视作真实反应的自发身体和生理变化。为确保高质量识别,人工智能(AI)系统必须使用足够的数据集进行训练,这些数据集不仅包括智能传感器收集的数据,还包括与引发的情感相关的标签。目前,用于情感标注的技术非常少。其中,朗设计的自我评估人体模型(SAM)是最受欢迎的之一。本研究通过实验表明,朗设计的原始SAM标注系统的图形方案对性别不中立,在其设计和表示中存在性别偏见。因此,根据专家评委的指导方针,提出并测试了一种新的图形设计。实验结果表明,在愉悦-唤醒-支配(PAD)情感空间中,情感标注总体上有了改进,尤其是对女性而言。这项研究证明了在多年来使用的工具验证中应用性别视角的相关性。