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首页> 外文期刊>International journal of human-computer studies >Younger and older users' recognition of virtual agent facial expressions
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Younger and older users' recognition of virtual agent facial expressions

机译:年轻人和老年人对虚拟代理面部表情的识别

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As technology advances, robots and virtual agents will be introduced into the home and healthcare settings to assist individuals, both young and old, with everyday living tasks. Understanding how users recognize an agent's social cues is therefore imperative, especially in social interactions. Facial expression, in particular, is one of the most common non-verbal cues used to display and communicate emotion in on-screen agents (Cassell et al., 2000). Age is important to consider because age-related differences in emotion recognition of human facial expression have been supported (Ruffman et al., 2008), with older adults showing a deficit for recognition of negative facial expressions. Previous work has shown that younger adults can effectively recognize facial emotions displayed by agents (Bartneck and Reichenbach, 2005; Courgeon et al., 2009, 2011; Breazeal, 2003); however, little research has compared in-depth younger and older adults' ability to label a virtual agent's facial emotions, an import consideration because social agents will be required to interact with users of varying ages. If such age-related differences exist for recognition of virtual agent facial expressions, we aim to understand if those age-related differences are influenced by the intensity of the emotion, dynamic formation of emotion (i.e., a neutral expression developing into an expression of emotion through motion), or the type of virtual character differing by human-likeness. Study 1 investigated the relationship between age-related differences, the implication of dynamic formation of emotion, and the role of emotion intensity in emotion recognition of the facial expressions of a virtual agent (iCat). Study 2 examined age-related differences in recognition expressed by three types of virtual characters differing by human-likeness (non-humanoid iCat, synthetic human, and human). Study 2 also investigated the role of configural and featural processing as a possible explanation for age-related differences in emotion recognition. First, our findings show age-related differences in the recognition of emotions expressed by a virtual agent, with older adults showing lower recognition for the emotions of anger, disgust, fear, happiness, sadness, and neutral. These age-related difference might be explained by older adults having difficulty discriminating similarity in configural arrangement of facial features for certain emotions; for example, older adults often mislabeled the similar emotions of fear as surprise. Second, our results did not provide evidence for the dynamic formation improving emotion recognition; but, in general, the intensity of the emotion improved recognition. Lastly, we learned that emotion recognition, for older and younger adults, differed by character type, from best to worst: human, synthetic human, and then iCat. Our findings provide guidance for design, as well as the development of a framework of age-related differences in emotion recognition. (C) 2014 Elsevier Ltd. All rights reserved.
机译:随着技术的进步,机器人和虚拟代理将被引入到家庭和医疗机构中,以帮助年轻人和老年人完成日常的生活任务。因此,必须了解用户如何识别代理人的社交线索,尤其是在社交互动中。特别地,面部表情是用于在屏幕上的媒介中显示和传达情感的最常见的非语言线索之一(Cassell等,2000)。考虑到年龄是很重要的,因为已经支持了与年龄相关的人类面部表情情感识别方面的差异(Ruffman等,2008),而老年人则表现出对负面面部表情识别的缺陷。先前的研究表明,年轻人可以有效地识别出由特工表现出来的面部表情(Bartneck和Reichenbach,2005; Courgeon等,2009,2011; Breazeal,2003)。但是,很少有研究比较深入的年轻人和老年人标记虚拟代理人面部表情的能力,这是一个重要考虑因素,因为需要社交代理人与不同年龄的用户进行互动。如果存在与年龄相关的差异以识别虚拟代理人的面部表情,我们旨在了解那些与年龄相关的差异是否受到情感强度,情感动态形成(即中性表达发展为情感表达)的影响(通过运动),或者虚拟角色的类型因人的风格而异。研究1研究了年龄相关差异,情绪动态形成的含义以及情绪强度在虚拟代理(iCat)面部表情的情绪识别中的作用之间的关系。研究2检验了与年龄相关的识别差异,该差异是由三种类型的虚拟字符所表达的,这些虚拟字符因人的相似性而异(非类人iCat,合成人和人)。研究2还调查了构形和特征处理作为可能的解释与年龄相关的情绪识别差异的作用。首先,我们的研究结果显示了虚拟代理表达的情绪识别中与年龄相关的差异,而老年人对愤怒,厌恶,恐惧,幸福,悲伤和中立情绪的识别性较低。这些与年龄相关的差异可能是由于老年人难以区分某些情绪的面部特征在构形上的相似性所致;例如,老年人经常将类似的恐惧情绪标记为惊奇。其次,我们的研究结果没有提供证据证明动态形成改善情绪识别。但是,总的来说,情感的强度提高了识别度。最后,我们了解到,对于老年人和年轻人来说,情感识别在字符类型方面有所不同,从最佳到最差:人类,人工合成的人类,然后是iCat。我们的发现为设计以及情绪识别中与年龄相关的差异框架的发展提供了指导。 (C)2014 Elsevier Ltd.保留所有权利。

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