倡导成分评价模型指导情绪识别

M. Mortillaro, B. Meuleman, K. Scherer
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引用次数: 50

摘要

大多数自动情绪识别模型使用离散视角和黑盒方法,即,它们在纯统计方法的基础上,从有限的候选术语池中选择一个情绪标签。虽然这些模型在情绪分类方面是成功的,但一些实际和理论上的缺陷限制了可能的应用范围。在本文中,作者建议在情绪识别建模中采用评价视角。作者建议使用评价作为表达特征输入和情感标签输出之间的中间层。然后,该模型将由两部分组成:首先,表达特征将用于估计评价;其次,由此产生的评价将用于预测情绪标签。虽然该模型的第二部分已经成为几项研究的对象,但第一部分尚未被探索。作者认为,该模型应建立在具体评价与表达特征之间联系的理论预测和实证结果的基础上。为此,作者建议使用情绪的成分过程模型,该模型包括对面部表情、声音和身体动作的评价的传出效应的详细预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advocating a Componential Appraisal Model to Guide Emotion Recognition
Most models of automatic emotion recognition use a discrete perspective and a black-box approach, i.e., they output an emotion label chosen from a limited pool of candidate terms, on the basis of purely statistical methods. Although these models are successful in emotion classification, a number of practical and theoretical drawbacks limit the range of possible applications. In this paper, the authors suggest the adoption of an appraisal perspective in modeling emotion recognition. The authors propose to use appraisals as an intermediate layer between expressive features input and emotion labeling output. The model would then be made of two parts: first, expressive features would be used to estimate appraisals; second, resulting appraisals would be used to predict an emotion label. While the second part of the model has already been the object of several studies, the first is unexplored. The authors argue that this model should be built on the basis of both theoretical predictions and empirical results about the link between specific appraisals and expressive features. For this purpose, the authors suggest to use the component process model of emotion, which includes detailed predictions of efferent effects of appraisals on facial expression, voice, and body movements.
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