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Detecting Decision Ambiguity from Facial Images

机译:从面部图像中检测决策歧义

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摘要

In situations when potentially costly decisions are being made, faces of people tend to reflect a level of certainty about the appropriateness of the chosen decision. This fact is known from the psychological literature. In the paper, we propose a method that uses facial images for automatic detection of the decision ambiguity state of a subject. To train and test the method, we collected a large-scale dataset from "Who Wants to Be a Millionaire?" -- a popular TV game show. The videos provide examples of various mental states of contestants, including uncertainty, doubts and hesitation. The annotation of the videos is done automatically from on-screen graphics. The problem of detecting decision ambiguity is formulated as binary classification. Video-clips where a contestant asks for help (audience, friend, 50:50) are considered as positive samples; if he (she) replies directly as negative ones. We propose a baseline method combining a deep convolutional neural network with an SVM. The method has an error rate of 24%. The error of human volunteers on the same dataset is 45%, close to chance.
机译:在潜在的昂贵决策时,人们的面孔倾向于反映出关于所选决定的适当性的确定性。这一事实是从心理文学中闻名的。在论文中,我们提出了一种方法,该方法使用面部图像来自动检测对象的决策歧义状态。要训​​练和测试该方法,我们从“谁想要成为百万富翁?”的大规模数据集 - 一个受欢迎的电视游戏展。该视频提供了参赛者的各种精神状态,包括不确定性,怀疑和犹豫。视频的注释是从屏幕上的图形自动完成的。检测决策歧义的问题被制定为二元分类。视频剪辑,参赛者要求帮助(观众,朋友,50:50)被视为正样品;如果他(她)直接回复消极的话。我们提出了一种基线方法,将深度卷积神经网络与SVM组合。该方法的错误率为24 %。同一数据集的人类志愿者的错误是45 %,接近机会。

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