改善就是改变:通过学习情绪变化来改善情绪预测

S. Narayana, Ramanathan Subramanian, Ibrahim Radwan, Roland Goecke
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引用次数: 3

摘要

虽然情绪和情感这两个术语关系密切,经常互换使用,但它们是根据持续时间、强度和归因来区分的。迄今为止,几乎没有任何计算模型(a)检查情绪识别,(b)在分析中模拟情绪和情绪状态之间的相互作用。在本文中,作为情绪预测的第一步,我们提出了一个框架,该框架既利用了AFEW-VA数据库中的主导情绪(或情绪)标签,也利用了情绪变化标签。评估单模态(仅使用情绪标签进行训练)和多模态(同时使用情绪和情绪变化标签进行训练)卷积神经网络的实验证实,在网络训练过程中加入情绪变化信息可以显著提高情绪预测性能,从而突出了同时建模情绪和情绪对于提高情感状态识别性能的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
To Improve Is to Change: Towards Improving Mood Prediction by Learning Changes in Emotion
Although the terms mood and emotion are closely related and often used interchangeably, they are distinguished based on their duration, intensity and attribution. To date, hardly any computational models have (a) examined mood recognition, and (b) modelled the interplay between mood and emotional state in their analysis. In this paper, as a first step towards mood prediction, we propose a framework that utilises both dominant emotion (or mood) labels, and emotional change labels on the AFEW-VA database. Experiments evaluating unimodal (trained only using mood labels) and multimodal (trained with both mood and emotion change labels) convolutional neural networks confirm that incorporating emotional change information in the network training process can significantly improve the mood prediction performance, thus highlighting the importance of modelling emotion and mood simultaneously for improved performance in affective state recognition.
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