Effects of Emotion Grouping for Recognition in Human-Robot Interactions

D. Tozadore, C. M. Ranieri, Guilherme V. Nardari, V. Guizilini, R. Romero
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引用次数: 7

Abstract

Understanding people's emotions may be important to achieve success in behavior adaptability and, consequently, to sustain long-term human-robot interactions. Most emotion recognition systems consist in classifying a given input into one out of seven basic emotions, following Ekman's model. However, it is sometimes enough for the customization of a robot's behavior to recognize whether an emotion is positive or negative, in order to approach more often subjects which display more positive emotional reactions. In this article, two approaches to that effect are proposed and compared. The first one, named pre-grouping, refers to combining the four negative emotions into one single class and use it to train a classifier. The second one, named post-grouping, refers to applying classifiers to classify the seven basic emotions and interpret their negative outputs as related to a single class. Furthermore, a novel dataset entitled QIDER, based on queries in a search engine and well defined facial cues, is introduced and made available for public use. Both approaches led to more balanced precision scores among all classes, which may make them a suitable choice for applications in human-robot interaction. Several experiments have been performed and post-grouping is shown to produce better overall accuracy.
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情感分组对人机交互识别的影响
理解人的情绪对于在行为适应性方面取得成功,从而维持长期的人机交互可能很重要。大多数情绪识别系统都遵循埃克曼的模型,将给定的输入分为七种基本情绪中的一种。然而,有时定制机器人的行为足以识别出一种情绪是积极的还是消极的,以便更频繁地接近表现出更积极情绪反应的对象。在本文中,提出了两种方法来达到这种效果,并进行了比较。第一种是“预分组”,是指将四种负面情绪组合成一个类,并用它来训练分类器。第二种称为后分组,指的是应用分类器对七种基本情绪进行分类,并将它们的负面输出解释为与单一类别相关。此外,一个名为QIDER的新数据集,基于搜索引擎中的查询和定义良好的面部线索,被引入并可供公众使用。这两种方法在所有类别中都获得了更平衡的精度分数,这可能使它们成为人机交互应用的合适选择。几个实验已经进行,后分组显示产生更好的整体准确性。
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