面部表情识别中的凝视和鼠标模式数据集

Alexandre Bruckert, Lucie Lévêque, Matthieu Perreira da Silva, P. Le Callet
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引用次数: 0

摘要

面部表情识别对于计算机视觉和情感计算社区来说都是一项重要而具有挑战性的任务,特别是在多媒体应用的背景下,观众的理解是特别感兴趣的。最近的面向数据的方法产生了对大规模带注释的数据集的需求。然而,由于使用的收集方法,大多数现有的数据集存在一些弱点。为了进一步突出这些问题,我们在这项工作中研究了在执行面部表情识别任务时人类视觉注意力是如何部署的。为此,我们在实验室和众包环境下,使用眼动追踪技术和BubbleView隐喻进行了几个互补实验。我们发现凝视模式的显著变化取决于所代表的情绪,也取决于任务的难度,即是否正确识别情绪。此外,我们利用这些结果对面部表情识别数据集的标签数据收集方法提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Dataset of Gaze and Mouse Patterns in the Context of Facial Expression Recognition
Facial expression recognition is an important and challenging task for both the computer vision and affective computing communities, and even more specifically in the context of multimedia applications, where audience understanding is of particular interest. Recent data-oriented approaches have created the need for large-scale annotated datasets. However, most existing datasets present some weaknesses, because of the collecting methods used. In order to further highlight these issues, we investigate in this work how human visual attention is deployed when performing a facial expression recognition task. To do so, we carried out several complementary experiments, using the eye-tracking technology, as well as the BubbleView metaphor, both under laboratory and crowdsourcing settings. We show significant variations in gaze patterns depending on the emotion represented, but also on the difficulty of the task, i.e., whether the emotion is correctly recognised or not. Moreover, we use these results to propose recommendations on the ways to collect label data for facial expression recognition datasets.
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